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{Hue[0.6, 0.2, 0.8], EdgeForm[{GrayLevel[0], Opacity[0.7]}],
InsetBox["", {15.61385658821099, 6.03237923445161},
Automatic, {0., 0.}],
InsetBox["", {10.665420497449903, 5.568350062570717},
Automatic, {0., 0.}],
InsetBox["", {5.858368294996275, 5.104320890689824},
Automatic, {0., 0.}],
InsetBox["", {3.7702370215322563, 4.64029171880893},
Automatic, {0., 0.}],
InsetBox["", {3.53822243559181, 4.1762625469280374},
Automatic, {0., 0.}],
InsetBox["", {1.6241021015831258, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {1.3920875156426793, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {0.9280583437617862, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {0.6960437578213396, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {0.4640291718808931, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {0.23201458594044655, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {0., 0.9280583437617862}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6679167482994921, 0.6858314473073943,
0.25739454837087017`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.44527783219966144`, 0.45722096487159625`,
0.1715963655805801],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6679167482994921, 0.6858314473073943, \
0.25739454837087017]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6679167482994921, 0.6858314473073943,
0.25739454837087017`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6679167482994921, 0.6858314473073943, 0.25739454837087017`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {0., 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {0.4640291718808931, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6139594293592816, 0.6529340435157591,
0.15081774239860324`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.4093062862395211, 0.4352893623438394, 0.10054516159906883`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6139594293592816, 0.6529340435157591, \
0.15081774239860324]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6139594293592816, 0.6529340435157591,
0.15081774239860324`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6139594293592816, 0.6529340435157591, 0.15081774239860324`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {0.4640291718808931, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {0.6960437578213396, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5380945278355667, 0.562473184027571, 0.1766561713547099],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3587296852237111, 0.3749821226850473, 0.11777078090313994`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5380945278355667, 0.562473184027571, \
0.1766561713547099]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5380945278355667, 0.562473184027571, 0.1766561713547099];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5380945278355667, 0.562473184027571, 0.1766561713547099],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {0.6960437578213396, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {0.9280583437617862, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5923496183436983, 0.5506100914532615, 0.07349425167285362],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.39489974556246554`, 0.36707339430217434`,
0.04899616778190241],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5923496183436983, 0.5506100914532615, \
0.07349425167285362]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5923496183436983, 0.5506100914532615,
0.07349425167285362];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5923496183436983, 0.5506100914532615, 0.07349425167285362],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {0.9280583437617862, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {1.1600729297022327, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.656018524045511, 0.569260480848256, 0.205314838502608],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.43734568269700735`, 0.3795069872321707,
0.13687655900173867`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.656018524045511, 0.569260480848256, \
0.205314838502608]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.656018524045511, 0.569260480848256, 0.205314838502608];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[0.656018524045511, 0.569260480848256, 0.205314838502608],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {1.1600729297022327, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {1.8561166875235724, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {1.6241021015831258, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.376265416393873, 0.4828207451547879, 0.03202603607081955],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2508436109292487, 0.32188049676985864`,
0.021350690713879704`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.376265416393873, 0.4828207451547879, \
0.03202603607081955]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.376265416393873, 0.4828207451547879, 0.03202603607081955];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.376265416393873, 0.4828207451547879, 0.03202603607081955],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {1.6241021015831258, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {2.0881312734640187, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.3898696985078631, 0.5415650198467612,
0.12501697531094802`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.25991313233857544`, 0.3610433465645075, 0.08334465020729868],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.3898696985078631, 0.5415650198467612, \
0.12501697531094802]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.3898696985078631, 0.5415650198467612,
0.12501697531094802`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.3898696985078631, 0.5415650198467612, 0.12501697531094802`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {2.0881312734640187, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {1.8561166875235724, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8820056984061888, 0.8131626884497678, 0.4979214028267511],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5880037989374592, 0.5421084589665119, 0.3319476018845008],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8820056984061888, 0.8131626884497678, \
0.4979214028267511]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8820056984061888, 0.8131626884497678, 0.4979214028267511];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8820056984061888, 0.8131626884497678, 0.4979214028267511],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {1.8561166875235724, 3.2482042031662512},
BaseStyle->"Graphics"]},
InsetBox["", {5.452342769600494, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {4.1762625469280374, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {3.016189617225805, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {2.552160445344912, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {2.3201458594044655, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {1.8561166875235724, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {1.6241021015831258, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.05031304243576917, 0.8436419398160837, 0.4333474356286766],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.03354202829051278, 0.5624279598773891, 0.28889829041911774`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.05031304243576917, 0.8436419398160837, \
0.4333474356286766]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.05031304243576917, 0.8436419398160837,
0.4333474356286766];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.05031304243576917, 0.8436419398160837, 0.4333474356286766],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {1.6241021015831258, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {2.0881312734640187, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.20058250033275082`, 0.7743856640506861,
0.42294723703095705`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.13372166688850057`, 0.5162571093671241, 0.2819648246873047],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.20058250033275082, 0.7743856640506861, \
0.42294723703095705]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.20058250033275082`, 0.7743856640506861,
0.42294723703095705`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.20058250033275082`, 0.7743856640506861, 0.42294723703095705`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {2.0881312734640187, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {2.7841750312853586, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {2.552160445344912, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5491296637395469, 0.9078274456168216, 0.5141671199337243],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.36608644249303124`, 0.6052182970778811, 0.3427780799558162],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5491296637395469, 0.9078274456168216, \
0.5141671199337243]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5491296637395469, 0.9078274456168216, 0.5141671199337243];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5491296637395469, 0.9078274456168216, 0.5141671199337243],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {2.552160445344912, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {3.016189617225805, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.41255360900348537`, 0.9048262515100636,
0.4847766913857201], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.27503573933565695`, 0.6032175010067091, 0.3231844609238134],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.41255360900348537, 0.9048262515100636, \
0.4847766913857201]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.41255360900348537`, 0.9048262515100636,
0.4847766913857201];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.41255360900348537`, 0.9048262515100636, 0.4847766913857201],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {3.016189617225805, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {2.7841750312853586, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.39466166514761647`, 0.9207612023004512,
0.36932481686094665`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2631077767650777, 0.6138408015336342, 0.24621654457396444`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.39466166514761647, 0.9207612023004512, \
0.36932481686094665]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.39466166514761647`, 0.9207612023004512,
0.36932481686094665`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.39466166514761647`, 0.9207612023004512, 0.36932481686094665`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {2.7841750312853586, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {3.480218789106698, 2.320145859404465},
Automatic, {0., 0.}], {
InsetBox["", {3.2482042031662517, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.07793846149447559, 0.6440861940218503,
0.030917813660761073`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.051958974329650395`, 0.42939079601456687`,
0.020611875773840715`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.07793846149447559, 0.6440861940218503, \
0.030917813660761073]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.07793846149447559, 0.6440861940218503,
0.030917813660761073`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.07793846149447559, 0.6440861940218503, 0.030917813660761073`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {3.2482042031662517, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {3.712233375047145, 1.8561166875235724},
Automatic, {0., 0.}], {
InsetBox["", {3.480218789106698, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.03190947317512682, 0.5599986621672612, 0.0632308133487165],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.021272982116751216`, 0.37333244144484085`,
0.042153875565811],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.03190947317512682, 0.5599986621672612, \
0.0632308133487165]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.03190947317512682, 0.5599986621672612,
0.0632308133487165];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.03190947317512682, 0.5599986621672612, 0.0632308133487165],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {3.480218789106698, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {3.944247960987591, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.1649008018128899, 0.5926071334059924,
0.012273057073958427`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.10993386787525994`, 0.3950714222706616,
0.008182038049305618],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.1649008018128899, 0.5926071334059924, \
0.012273057073958427]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.1649008018128899, 0.5926071334059924,
0.012273057073958427`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.1649008018128899, 0.5926071334059924, 0.012273057073958427`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {3.944247960987591, 1.3920875156426789},
BaseStyle->"Graphics"]},
InsetBox["", {5.33633547663027, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {4.872306304749378, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {4.640291718808931, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {4.408277132868484, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {4.1762625469280374, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.45110952917227953`, 0.9874604192978074,
0.057940416672767725`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.300739686114853, 0.6583069461985382, 0.03862694444851182],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.45110952917227953, 0.9874604192978074, \
0.057940416672767725]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.45110952917227953`, 0.9874604192978074,
0.057940416672767725`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.45110952917227953`, 0.9874604192978074, 0.057940416672767725`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {4.1762625469280374, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {4.640291718808931, 0.9280583437617862},
Automatic, {0., 0.}], {
InsetBox["", {4.408277132868484, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4161620127727508, 0.9396888273245323,
0.14724134143610712`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.27744134184850056`, 0.6264592182163549, 0.09816089429073808],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4161620127727508, 0.9396888273245323, \
0.14724134143610712]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4161620127727508, 0.9396888273245323,
0.14724134143610712`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4161620127727508, 0.9396888273245323, 0.14724134143610712`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {4.408277132868484, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {4.872306304749378, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.44013426923363164`, 0.9283240211587249,
0.06902295271917436], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2934228461557544, 0.6188826807724833, 0.046015301812782905`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.44013426923363164, 0.9283240211587249, \
0.06902295271917436]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.44013426923363164`, 0.9283240211587249,
0.06902295271917436];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.44013426923363164`, 0.9283240211587249, 0.06902295271917436],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {4.872306304749378, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {4.872306304749378, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4988871827680881, 0.9034332238110823,
0.017779974902396356`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3325914551787254, 0.6022888158740549, 0.011853316601597571`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4988871827680881, 0.9034332238110823, \
0.017779974902396356]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4988871827680881, 0.9034332238110823,
0.017779974902396356`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4988871827680881, 0.9034332238110823, 0.017779974902396356`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {4.872306304749378, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {5.104320890689824, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4944510469587087, 0.9262361249099642,
0.24139812648399217`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3296340313058058, 0.6174907499399762, 0.16093208432266146`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4944510469587087, 0.9262361249099642, \
0.24139812648399217]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4944510469587087, 0.9262361249099642,
0.24139812648399217`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4944510469587087, 0.9262361249099642, 0.24139812648399217`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {5.104320890689824, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {5.800364648511164, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {5.568350062570717, 1.8561166875235724},
Automatic, {0., 0.}], {
InsetBox["", {5.33633547663027, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.20825431853322374`, 0.8768934732057274,
0.011455436864155288`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.1388362123554825, 0.5845956488038183, 0.007636957909436859],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.20825431853322374, 0.8768934732057274, \
0.011455436864155288]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.20825431853322374`, 0.8768934732057274,
0.011455436864155288`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.20825431853322374`, 0.8768934732057274, 0.011455436864155288`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {5.33633547663027, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {5.800364648511164, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.20071935844913225`, 0.8685168544063913, 0.084612988944615],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.13381290563275483`, 0.5790112362709275, 0.05640865929641],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.20071935844913225, 0.8685168544063913, \
0.084612988944615]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.20071935844913225`, 0.8685168544063913,
0.084612988944615];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.20071935844913225`, 0.8685168544063913, 0.084612988944615],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {5.800364648511164, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {6.03237923445161, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.07795039039441454, 0.8125768370754207,
0.026132487820257788`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.05196692692960969, 0.5417178913836138,
0.017421658546838525`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.07795039039441454, 0.8125768370754207, \
0.026132487820257788]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.07795039039441454, 0.8125768370754207,
0.026132487820257788`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.07795039039441454, 0.8125768370754207, 0.026132487820257788`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {6.03237923445161, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {6.72842299227295, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {6.496408406332503, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {6.264393820392057, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8898905573347697, 0.9889360604546706, 0.3686514418094584],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5932603715565132, 0.6592907069697804, 0.2457676278729723],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8898905573347697, 0.9889360604546706, \
0.3686514418094584]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8898905573347697, 0.9889360604546706, 0.3686514418094584];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8898905573347697, 0.9889360604546706, 0.3686514418094584],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {6.264393820392057, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {6.72842299227295, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7757247311458431, 0.9171105337531809,
0.40468590043409436`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5171498207638954, 0.6114070225021206, 0.2697906002893963],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7757247311458431, 0.9171105337531809, \
0.40468590043409436]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7757247311458431, 0.9171105337531809,
0.40468590043409436`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7757247311458431, 0.9171105337531809, 0.40468590043409436`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {6.72842299227295, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {6.960437578213396, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6223818130175587, 0.8647342883382103,
0.12358438196547739`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.41492120867837246`, 0.576489525558807, 0.08238958797698492],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6223818130175587, 0.8647342883382103, \
0.12358438196547739]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6223818130175587, 0.8647342883382103,
0.12358438196547739`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6223818130175587, 0.8647342883382103, 0.12358438196547739`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {6.960437578213396, 2.784175031285358},
BaseStyle->"Graphics"]}, {
InsetBox["", {4.002251607472703, 4.1762625469280374},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.21401859434945925`, 0.37526608828291286`,
0.22137625892898094`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.1426790628996395, 0.25017739218860857`,
0.14758417261932064`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.21401859434945925, 0.37526608828291286, \
0.22137625892898094]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.21401859434945925`, 0.37526608828291286`,
0.22137625892898094`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.21401859434945925`, 0.37526608828291286`, 0.22137625892898094`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {4.002251607472703, 4.1762625469280374},
BaseStyle->"Graphics"]},
InsetBox["", {7.946499568460294, 4.64029171880893},
Automatic, {0., 0.}], {
InsetBox["", {7.714484982519847, 4.1762625469280374},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.1607046279565203, 0.6373012474163353, 0.9689292645102463],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.1071364186376802, 0.4248674982775569, 0.6459528430068309],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.1607046279565203, 0.6373012474163353, \
0.9689292645102463]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.1607046279565203, 0.6373012474163353, 0.9689292645102463];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.1607046279565203, 0.6373012474163353, 0.9689292645102463],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {7.714484982519847, 4.1762625469280374},
BaseStyle->"Graphics"]},
InsetBox["", {8.178514154400741, 4.1762625469280374},
Automatic, {0., 0.}],
InsetBox["", {7.42446675009429, 3.7122333750471443},
Automatic, {0., 0.}], {
InsetBox["", {7.192452164153843, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6439527077498541, 0.9761272160419177, 0.8378250037134505],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.42930180516656946`, 0.6507514773612785, 0.5585500024756337],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6439527077498541, 0.9761272160419177, \
0.8378250037134505]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6439527077498541, 0.9761272160419177, 0.8378250037134505];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6439527077498541, 0.9761272160419177, 0.8378250037134505],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {7.192452164153843, 3.2482042031662512},
BaseStyle->"Graphics"]}, {
InsetBox["", {7.656481336034736, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.15608615638697199`, 0.9285313131353987,
0.8157352207677506], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.10405743759131467`, 0.6190208754235992, 0.5438234805118338],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.15608615638697199, 0.9285313131353987, \
0.8157352207677506]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.15608615638697199`, 0.9285313131353987,
0.8157352207677506];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.15608615638697199`, 0.9285313131353987, 0.8157352207677506],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {7.656481336034736, 3.2482042031662512},
BaseStyle->"Graphics"]},
InsetBox["", {8.932561558707192, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {8.120510507915629, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {7.656481336034736, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {7.42446675009429, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7157781428983347, 0.9674956250299593, 0.9481234233874289],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.47718542859888985`, 0.6449970833533063, 0.632082282258286],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7157781428983347, 0.9674956250299593, \
0.9481234233874289]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7157781428983347, 0.9674956250299593, 0.9481234233874289];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7157781428983347, 0.9674956250299593, 0.9481234233874289],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {7.42446675009429, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {7.888495921975182, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.601384893896227, 0.828840077348916, 0.884245264976462],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.4009232625974847, 0.552560051565944, 0.5894968433176414],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.601384893896227, 0.828840077348916, \
0.884245264976462]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.601384893896227, 0.828840077348916, 0.884245264976462];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[0.601384893896227, 0.828840077348916, 0.884245264976462],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {7.888495921975182, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {8.584539679796523, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {8.352525093856075, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.3179213644401604, 0.9469298027085102, 0.9942741651602289],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.21194757629344027`, 0.6312865351390069, 0.6628494434401526],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.3179213644401604, 0.9469298027085102, \
0.9942741651602289]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.3179213644401604, 0.9469298027085102, 0.9942741651602289];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.3179213644401604, 0.9469298027085102, 0.9942741651602289],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {8.352525093856075, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {8.816554265736968, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.31315339380227214`, 0.8229580467222182,
0.8667510577348807], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.20876892920151477`, 0.5486386978148121, 0.5778340384899205],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.31315339380227214, 0.8229580467222182, \
0.8667510577348807]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.31315339380227214`, 0.8229580467222182,
0.8667510577348807];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.31315339380227214`, 0.8229580467222182, 0.8667510577348807],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {8.816554265736968, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {9.744612609498756, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {9.512598023558308, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {9.280583437617862, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.025515431955801526`, 0.6543511358748075,
0.7863157670856369], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.017010287970534353`, 0.43623409058320506`,
0.5242105113904246],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.025515431955801526, 0.6543511358748075, \
0.7863157670856369]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.025515431955801526`, 0.6543511358748075,
0.7863157670856369];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.025515431955801526`, 0.6543511358748075, 0.7863157670856369],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.280583437617862, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {9.744612609498756, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.08498769639891157, 0.6364119150252234, 0.8466121921700542],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.05665846426594105, 0.42427461001681566`, 0.5644081281133695],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.08498769639891157, 0.6364119150252234, \
0.8466121921700542]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.08498769639891157, 0.6364119150252234,
0.8466121921700542];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.08498769639891157, 0.6364119150252234, 0.8466121921700542],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.744612609498756, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {9.976627195439201, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.2882558025692388, 0.7830540869350624, 0.9284547645169767],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.1921705350461592, 0.5220360579567083, 0.6189698430113179],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.2882558025692388, 0.7830540869350624, \
0.9284547645169767]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.2882558025692388, 0.7830540869350624, 0.9284547645169767];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.2882558025692388, 0.7830540869350624, 0.9284547645169767],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.976627195439201, 2.784175031285358},
BaseStyle->"Graphics"]},
InsetBox["", {15.472472699903529, 5.104320890689824},
Automatic, {0., 0.}],
InsetBox["", {15.240458113963083, 4.64029171880893},
Automatic, {0., 0.}],
InsetBox["", {15.008443528022637, 4.1762625469280374},
Automatic, {0., 0.}],
InsetBox["", {13.65985874724379, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {12.00675482241811, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {10.440656367320095, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {10.208641781379647, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {9.280583437617862, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {8.816554265736968, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {8.584539679796523, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.952033432075835, 0.40481007157714344`,
0.33251478257231937`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6346889547172234, 0.269873381051429, 0.2216765217148796],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.952033432075835, 0.40481007157714344, \
0.33251478257231937]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.952033432075835, 0.40481007157714344`,
0.33251478257231937`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.952033432075835, 0.40481007157714344`, 0.33251478257231937`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {8.584539679796523, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {9.048568851677416, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9987643065974323, 0.45150203273867984`,
0.37526371628473476`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6658428710649549, 0.3010013551591199, 0.2501758108564899],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9987643065974323, 0.45150203273867984, \
0.37526371628473476]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9987643065974323, 0.45150203273867984`,
0.37526371628473476`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9987643065974323, 0.45150203273867984`, 0.37526371628473476`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.048568851677416, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {9.744612609498756, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {9.512598023558308, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8682342416827578, 0.46443383922150705`,
0.31778221660858774`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5788228277885052, 0.3096225594810047, 0.21185481107239185`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8682342416827578, 0.46443383922150705, \
0.31778221660858774]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8682342416827578, 0.46443383922150705`,
0.31778221660858774`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8682342416827578, 0.46443383922150705`, 0.31778221660858774`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.512598023558308, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {9.976627195439201, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.81919725850503, 0.405279225945401, 0.2374922798212442],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.54613150567002, 0.27018615063026735`, 0.15832818654749614`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.81919725850503, 0.405279225945401, \
0.2374922798212442]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.81919725850503, 0.405279225945401, 0.2374922798212442];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[0.81919725850503, 0.405279225945401, 0.2374922798212442],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {9.976627195439201, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {11.136700125141434, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {10.67267095326054, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {10.440656367320095, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9268025316568389, 0.12763332026078866`,
0.25168507490622516`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6178683544378927, 0.08508888017385911, 0.16779004993748345`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9268025316568389, 0.12763332026078866, \
0.25168507490622516]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9268025316568389, 0.12763332026078866`,
0.25168507490622516`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9268025316568389, 0.12763332026078866`, 0.25168507490622516`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {10.440656367320095, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {10.904685539200988, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7882004957032265, 0.023442543425502338`,
0.13257683145688093`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5254669971354844, 0.015628362283668228`,
0.08838455430458729],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7882004957032265, 0.023442543425502338, \
0.13257683145688093]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7882004957032265, 0.023442543425502338`,
0.13257683145688093`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7882004957032265, 0.023442543425502338`, 0.13257683145688093`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {10.904685539200988, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {11.600729297022328, 1.3920875156426789},
Automatic, {0., 0.}],
InsetBox["", {11.36871471108188, 0.9280583437617862},
Automatic, {0., 0.}], {
InsetBox["", {11.136700125141434, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.749007524950958, 0.28962650513541166`,
0.19324175616295247`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.49933834996730536`, 0.19308433675694112`,
0.12882783744196832`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.749007524950958, 0.28962650513541166, \
0.19324175616295247]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.749007524950958, 0.28962650513541166`,
0.19324175616295247`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.749007524950958, 0.28962650513541166`, 0.19324175616295247`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {11.136700125141434, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {11.600729297022328, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6449789480884289, 0.19104232432543533`,
0.10196394550504873`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.42998596539228595`, 0.12736154955029022`,
0.06797596367003249],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6449789480884289, 0.19104232432543533, \
0.10196394550504873]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6449789480884289, 0.19104232432543533`,
0.10196394550504873`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6449789480884289, 0.19104232432543533`, 0.10196394550504873`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {11.600729297022328, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {11.832743882962774, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.646159433000173, 0.008079982416571152,
0.12827340509758578`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.43077295533344867`, 0.005386654944380768,
0.08551560339839052],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.646159433000173, 0.008079982416571152, \
0.12827340509758578]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.646159433000173, 0.008079982416571152,
0.12827340509758578`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.646159433000173, 0.008079982416571152, 0.12827340509758578`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {11.832743882962774, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {10.67267095326054, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8725665695388154, 0.5799712277186857,
0.39517856841247645`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5817110463592103, 0.3866474851457905, 0.26345237894165097`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8725665695388154, 0.5799712277186857, \
0.39517856841247645]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8725665695388154, 0.5799712277186857,
0.39517856841247645`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8725665695388154, 0.5799712277186857, 0.39517856841247645`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {10.67267095326054, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {13.572853277516122, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {13.340838691575676, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {13.10882410563523, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {12.528787640784113, 1.3920875156426789},
Automatic, {0., 0.}],
InsetBox["", {12.296773054843667, 0.9280583437617862},
Automatic, {0., 0.}],
InsetBox["", {12.06475846890322, 0.46402917188089265},
Automatic, {0., 0.}], {
InsetBox["", {11.832743882962774, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4337092499425701, 0.13374538864832375`,
0.10569661420653587`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2891394999617134, 0.08916359243221583, 0.07046440947102392],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4337092499425701, 0.13374538864832375, \
0.10569661420653587]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4337092499425701, 0.13374538864832375`,
0.10569661420653587`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4337092499425701, 0.13374538864832375`, 0.10569661420653587`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {11.832743882962774, 0.},
BaseStyle->"Graphics"]}, {
InsetBox["", {12.296773054843667, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5105345788576046, 0.19987470362655269`,
0.14066564281805682`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3403563859050697, 0.1332498024177018, 0.09377709521203789],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5105345788576046, 0.19987470362655269, \
0.14066564281805682]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5105345788576046, 0.19987470362655269`,
0.14066564281805682`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5105345788576046, 0.19987470362655269`, 0.14066564281805682`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {12.296773054843667, 0.},
BaseStyle->"Graphics"]}, {
InsetBox["", {12.528787640784113, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5690117475838352, 0.2983016528583635, 0.2112398745772952],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.37934116505589016`, 0.19886776857224236`,
0.14082658305153015`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5690117475838352, 0.2983016528583635, \
0.2112398745772952]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5690117475838352, 0.2983016528583635, 0.2112398745772952];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5690117475838352, 0.2983016528583635, 0.2112398745772952],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {12.528787640784113, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {12.76080222672456, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.5302066022745175, 0.2688432834076546, 0.2783297094203989],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3534710681830117, 0.1792288556051031, 0.1855531396135993],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.5302066022745175, 0.2688432834076546, \
0.2783297094203989]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.5302066022745175, 0.2688432834076546, 0.2783297094203989];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.5302066022745175, 0.2688432834076546, 0.2783297094203989],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {12.76080222672456, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {13.688860570486346, 1.3920875156426789},
Automatic, {0., 0.}],
InsetBox["", {13.224831398605453, 0.9280583437617862},
Automatic, {0., 0.}], {
InsetBox["", {12.992816812665007, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.48500972956287414`, 0.2971155481751697,
0.09593135341612724], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3233398197085828, 0.19807703211677982`, 0.0639542356107515],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.48500972956287414, 0.2971155481751697, \
0.09593135341612724]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.48500972956287414`, 0.2971155481751697,
0.09593135341612724];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.48500972956287414`, 0.2971155481751697, 0.09593135341612724],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {12.992816812665007, 0.46402917188089265},
BaseStyle->"Graphics"]},
InsetBox["", {13.4568459845459, 0.46402917188089265},
Automatic, {0., 0.}], {
InsetBox["", {13.224831398605453, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.35449128336277735`, 0.26045666623612274`,
0.07092181781152762], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.23632752224185158`, 0.1736377774907485, 0.04728121187435175],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.35449128336277735, 0.26045666623612274, \
0.07092181781152762]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.35449128336277735`, 0.26045666623612274`,
0.07092181781152762];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.35449128336277735`, 0.26045666623612274`, 0.07092181781152762],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {13.224831398605453, 0.},
BaseStyle->"Graphics"]}, {
InsetBox["", {13.688860570486346, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.3756612657871976, 0.32765695791801774`,
0.07977435747059025], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.25044084385813176`, 0.21843797194534517`,
0.053182904980393506`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.3756612657871976, 0.32765695791801774, \
0.07977435747059025]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.3756612657871976, 0.32765695791801774`,
0.07977435747059025];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.3756612657871976, 0.32765695791801774`, 0.07977435747059025],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {13.688860570486346, 0.},
BaseStyle->"Graphics"]},
InsetBox["", {14.15288974236724, 0.9280583437617862},
Automatic, {0., 0.}], {
InsetBox["", {13.920875156426792, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.3068417355876547, 0.24237910179601818`,
0.1400588411587418], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.20456115705843647`, 0.16158606786401214`,
0.09337256077249453],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.3068417355876547, 0.24237910179601818, \
0.1400588411587418]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.3068417355876547, 0.24237910179601818`,
0.1400588411587418];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.3068417355876547, 0.24237910179601818`, 0.1400588411587418],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {13.920875156426792, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {14.384904328307686, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.38307692023350426`, 0.3129396217464002,
0.24475283360473288`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2553846134890029, 0.20862641449760017`,
0.16316855573648859`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.38307692023350426, 0.3129396217464002, \
0.24475283360473288]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.38307692023350426`, 0.3129396217464002,
0.24475283360473288`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.38307692023350426`, 0.3129396217464002, 0.24475283360473288`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {14.384904328307686, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {13.572853277516122, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.2160015986233994, 0.016117277965516097`,
0.03642035465709004], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.14400106574893295`, 0.010744851977010732`,
0.024280236438060026`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.2160015986233994, 0.016117277965516097, \
0.03642035465709004]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.2160015986233994, 0.016117277965516097`,
0.03642035465709004];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.2160015986233994, 0.016117277965516097`, 0.03642035465709004],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {13.572853277516122, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {13.80486786345657, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4056775214781627, 0.12919083109947693`, 0.284798174052874],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2704516809854418, 0.08612722073298462, 0.18986544936858268`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4056775214781627, 0.12919083109947693, \
0.284798174052874]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4056775214781627, 0.12919083109947693`,
0.284798174052874];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4056775214781627, 0.12919083109947693`, 0.284798174052874],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {13.80486786345657, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {15.312962672069473, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {15.080948086129025, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {14.84893350018858, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {14.616918914248133, 1.8561166875235724},
Automatic, {0., 0.}], {
InsetBox["", {14.384904328307686, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6346968210896571, 0.4913478156215356, 0.565279560197691],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.4231312140597714, 0.3275652104143571, 0.376853040131794],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6346968210896571, 0.4913478156215356, \
0.565279560197691]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6346968210896571, 0.4913478156215356, 0.565279560197691];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6346968210896571, 0.4913478156215356, 0.565279560197691],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {14.384904328307686, 1.3920875156426789},
BaseStyle->"Graphics"]},
InsetBox["", {14.84893350018858, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {14.616918914248133, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7114622691222494, 0.47738149122377105`,
0.6847341223024412], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.47430817941483294`, 0.31825432748251403`,
0.4564894148682942],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7114622691222494, 0.47738149122377105, \
0.6847341223024412]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7114622691222494, 0.47738149122377105`,
0.6847341223024412];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7114622691222494, 0.47738149122377105`, 0.6847341223024412],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {14.616918914248133, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.080948086129025, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8615293314675925, 0.5681796859923716, 0.7366683214056262],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5743528876450616, 0.3787864573282477, 0.4911122142704175],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8615293314675925, 0.5681796859923716, \
0.7366683214056262]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8615293314675925, 0.5681796859923716, 0.7366683214056262];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8615293314675925, 0.5681796859923716, 0.7366683214056262],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.080948086129025, 0.9280583437617862},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.080948086129025, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6621932501171739, 0.653001424332583, 0.7818336387127363],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.4414621667447826, 0.4353342828883887, 0.5212224258084909],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6621932501171739, 0.653001424332583, \
0.7818336387127363]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6621932501171739, 0.653001424332583, 0.7818336387127363];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6621932501171739, 0.653001424332583, 0.7818336387127363],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.080948086129025, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.312962672069473, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9911381628163844, 0.7754570919942456, 0.9008191729930068],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.660758775210923, 0.5169713946628305, 0.6005461153286713],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9911381628163844, 0.7754570919942456, \
0.9008191729930068]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9911381628163844, 0.7754570919942456, 0.9008191729930068];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9911381628163844, 0.7754570919942456, 0.9008191729930068],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.312962672069473, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.544977258009919, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9024287877437147, 0.5317346329046877, 0.568782656692393],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6016191918291431, 0.3544897552697918, 0.3791884377949287],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9024287877437147, 0.5317346329046877, \
0.568782656692393]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9024287877437147, 0.5317346329046877, 0.568782656692393];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9024287877437147, 0.5317346329046877, 0.568782656692393],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.544977258009919, 2.784175031285358},
BaseStyle->"Graphics"]},
InsetBox["", {16.357028308801482, 3.7122333750471443},
Automatic, {0., 0.}], {
InsetBox["", {16.125013722861034, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9473497612405273, 0.18550575191339003`, 0.422594494173578],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6315665074936849, 0.12367050127559336`, 0.2817296627823853],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9473497612405273, 0.18550575191339003, \
0.422594494173578]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9473497612405273, 0.18550575191339003`,
0.422594494173578];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9473497612405273, 0.18550575191339003`, 0.422594494173578],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {16.125013722861034, 3.2482042031662512},
BaseStyle->"Graphics"]},
InsetBox["", {16.58904289474193, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {16.00900642989081, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {15.776991843950364, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9108944806367363, 0.0984328006307964, 0.6918209527867147],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6072629870911576, 0.06562186708719761, 0.4612139685244765],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9108944806367363, 0.0984328006307964, \
0.6918209527867147]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9108944806367363, 0.0984328006307964, 0.6918209527867147];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9108944806367363, 0.0984328006307964, 0.6918209527867147],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.776991843950364, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {16.241021015831258, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8185102374959643, 0.0063090602545117225`,
0.5681527465947198], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5456734916639763, 0.004206040169674482,
0.37876849772981325`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8185102374959643, 0.0063090602545117225, \
0.5681527465947198]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8185102374959643, 0.0063090602545117225`,
0.5681527465947198];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8185102374959643, 0.0063090602545117225`, 0.5681527465947198],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {16.241021015831258, 2.320145859404465},
BaseStyle->"Graphics"]},
InsetBox["", {17.169079359593045, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {16.70505018771215, 2.320145859404465},
Automatic, {0., 0.}], {
InsetBox["", {16.473035601771706, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8850828555741959, 0.08831147921722549, 0.5036381699957322],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5900552370494639, 0.058874319478150326`, 0.3357587799971548],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8850828555741959, 0.08831147921722549, \
0.5036381699957322]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8850828555741959, 0.08831147921722549,
0.5036381699957322];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8850828555741959, 0.08831147921722549, 0.5036381699957322],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {16.473035601771706, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {16.937064773652597, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9488441326706527, 0.2835365938795835, 0.5997826687447858],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6325627551137685, 0.18902439591972237`, 0.3998551124965239],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9488441326706527, 0.2835365938795835, \
0.5997826687447858]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9488441326706527, 0.2835365938795835, 0.5997826687447858];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9488441326706527, 0.2835365938795835, 0.5997826687447858],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {16.937064773652597, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {17.633108531473937, 2.320145859404465},
Automatic, {0., 0.}], {
InsetBox["", {17.401093945533493, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8292210535994682, 0.2782749166084797, 0.5211360262573015],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5528140357329788, 0.18551661107231981`, 0.3474240175048677],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8292210535994682, 0.2782749166084797, \
0.5211360262573015]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8292210535994682, 0.2782749166084797, 0.5211360262573015];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8292210535994682, 0.2782749166084797, 0.5211360262573015],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {17.401093945533493, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {17.865123117414385, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7772643913585109, 0.3376165133934703,
0.49800260138623687`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5181762609056739, 0.2250776755956469, 0.33200173425749124`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7772643913585109, 0.3376165133934703, \
0.49800260138623687]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7772643913585109, 0.3376165133934703,
0.49800260138623687`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7772643913585109, 0.3376165133934703, 0.49800260138623687`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {17.865123117414385, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.472472699903529, 4.1762625469280374},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8682400385737785, 0.5143737141446822, 0.1209266399093265],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.578826692382519, 0.34291580942978817`, 0.080617759939551],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8682400385737785, 0.5143737141446822, \
0.1209266399093265]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8682400385737785, 0.5143737141446822, 0.1209266399093265];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8682400385737785, 0.5143737141446822, 0.1209266399093265],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.472472699903529, 4.1762625469280374},
BaseStyle->"Graphics"]}, {
InsetBox["", {15.704487285843976, 4.64029171880893},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.9317659140416628, 0.021208208961382757`,
0.011865158592804903`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.6211772760277752, 0.014138805974255172`,
0.007910105728536603],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.9317659140416628, 0.021208208961382757, \
0.011865158592804903]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.9317659140416628, 0.021208208961382757`,
0.011865158592804903`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.9317659140416628, 0.021208208961382757`, 0.011865158592804903`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {15.704487285843976, 4.64029171880893},
BaseStyle->"Graphics"]},
InsetBox["", {20.562292678972074, 5.568350062570717},
Automatic, {0., 0.}],
InsetBox["", {19.48922521899751, 5.104320890689824},
Automatic, {0., 0.}],
InsetBox["", {19.257210633057063, 4.64029171880893},
Automatic, {0., 0.}],
InsetBox["", {19.025196047116616, 4.1762625469280374},
Automatic, {0., 0.}], {
InsetBox["", {18.79318146117617, 3.7122333750471443},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8338737135848504, 0.18250225597718828`,
0.9830411664923313], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.555915809056567, 0.12166817065145885`, 0.6553607776615542],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8338737135848504, 0.18250225597718828, \
0.9830411664923313]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8338737135848504, 0.18250225597718828`,
0.9830411664923313];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8338737135848504, 0.18250225597718828`, 0.9830411664923313],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {18.79318146117617, 3.7122333750471443},
BaseStyle->"Graphics"]}, {
InsetBox["", {19.257210633057063, 3.7122333750471443},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7953676329594372, 0.03788710094970438, 0.9048499290399703],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5302450886396248, 0.02525806729980292, 0.6032332860266469],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7953676329594372, 0.03788710094970438, \
0.9048499290399703]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7953676329594372, 0.03788710094970438,
0.9048499290399703];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7953676329594372, 0.03788710094970438, 0.9048499290399703],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.257210633057063, 3.7122333750471443},
BaseStyle->"Graphics"]}, {
InsetBox["", {19.48922521899751, 4.1762625469280374},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8848866066655054, 0.06343695440135688, 0.9165629599484697],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5899244044436703, 0.042291302934237926`, 0.6110419732989798],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8848866066655054, 0.06343695440135688, \
0.9165629599484697]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8848866066655054, 0.06343695440135688,
0.9165629599484697];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8848866066655054, 0.06343695440135688, 0.9165629599484697],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.48922521899751, 4.1762625469280374},
BaseStyle->"Graphics"]}, {
InsetBox["", {19.721239804937955, 4.64029171880893},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.8745560174875824, 0.13656524236486112`,
0.8420476792873555], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.5830373449917217, 0.09104349490990742, 0.5613651195249036],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.8745560174875824, 0.13656524236486112, \
0.8420476792873555]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.8745560174875824, 0.13656524236486112`,
0.8420476792873555];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.8745560174875824, 0.13656524236486112`, 0.8420476792873555],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.721239804937955, 4.64029171880893},
BaseStyle->"Graphics"]},
InsetBox["", {21.63536013894664, 5.104320890689824},
Automatic, {0., 0.}],
InsetBox["", {21.403345553006194, 4.64029171880893},
Automatic, {0., 0.}],
InsetBox["", {20.301276269789074, 4.1762625469280374},
Automatic, {0., 0.}],
InsetBox["", {19.721239804937955, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {19.257210633057063, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {19.025196047116616, 2.784175031285358},
Automatic, {0., 0.}],
InsetBox["", {18.561166875235724, 2.320145859404465},
Automatic, {0., 0.}],
InsetBox["", {18.329152289295276, 1.8561166875235724},
Automatic, {0., 0.}],
InsetBox["", {18.097137703354832, 1.3920875156426789},
Automatic, {0., 0.}], {
InsetBox["", {17.865123117414385, 0.9280583437617862},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4613157029035704, 0.05837017210102324, 0.7945624734877152],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.3075438019357136, 0.03891344806734883, 0.5297083156584769],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4613157029035704, 0.05837017210102324, \
0.7945624734877152]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4613157029035704, 0.05837017210102324,
0.7945624734877152];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4613157029035704, 0.05837017210102324, 0.7945624734877152],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {17.865123117414385, 0.9280583437617862},
BaseStyle->"Graphics"]},
InsetBox["", {18.329152289295276, 0.9280583437617862},
Automatic, {0., 0.}],
InsetBox["", {18.097137703354832, 0.46402917188089265},
Automatic, {0., 0.}], {
InsetBox["", {17.865123117414385, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.2805898326634104, 0.11476353311019594`,
0.6879250802199031], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.18705988844227361`, 0.07650902207346397,
0.45861672014660204`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.2805898326634104, 0.11476353311019594, \
0.6879250802199031]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.2805898326634104, 0.11476353311019594`,
0.6879250802199031];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.2805898326634104, 0.11476353311019594`, 0.6879250802199031],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {17.865123117414385, 0.},
BaseStyle->"Graphics"]}, {
InsetBox["", {18.329152289295276, 0.}, Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.2559257456762276, 0.06492830862082921, 0.7141454522303832],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.17061716378415176`, 0.04328553908055281, 0.4760969681535888],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.2559257456762276, 0.06492830862082921, \
0.7141454522303832]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.2559257456762276, 0.06492830862082921,
0.7141454522303832];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.2559257456762276, 0.06492830862082921, 0.7141454522303832],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {18.329152289295276, 0.},
BaseStyle->"Graphics"]}, {
InsetBox["", {18.561166875235724, 0.46402917188089265},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4239890133123325, 0.19317336618025327`,
0.8170150339532951], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.2826593422082217, 0.12878224412016887`, 0.5446766893021968],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.4239890133123325, 0.19317336618025327, \
0.8170150339532951]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.4239890133123325, 0.19317336618025327`,
0.8170150339532951];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.4239890133123325, 0.19317336618025327`, 0.8170150339532951],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {18.561166875235724, 0.46402917188089265},
BaseStyle->"Graphics"]}, {
InsetBox["", {18.561166875235724, 1.3920875156426789},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.34268057524275797`, 0.20664873715234156`,
0.9372748611065831], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.22845371682850532`, 0.1377658247682277, 0.6248499074043887],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.34268057524275797, 0.20664873715234156, \
0.9372748611065831]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.34268057524275797`, 0.20664873715234156`,
0.9372748611065831];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.34268057524275797`, 0.20664873715234156`, 0.9372748611065831],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {18.561166875235724, 1.3920875156426789},
BaseStyle->"Graphics"]}, {
InsetBox["", {18.79318146117617, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6066898319921272, 0.23034435765592076`, 0.832311509502129],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.4044598879947515, 0.15356290510394718`, 0.554874339668086],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6066898319921272, 0.23034435765592076, \
0.832311509502129]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6066898319921272, 0.23034435765592076`,
0.832311509502129];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6066898319921272, 0.23034435765592076`, 0.832311509502129],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {18.79318146117617, 1.8561166875235724},
BaseStyle->"Graphics"]},
InsetBox["", {19.48922521899751, 2.320145859404465},
Automatic, {0., 0.}], {
InsetBox["", {19.257210633057063, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.2682375511449686, 0.07088836061422787, 0.5259740469659895],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.17882503409664574`, 0.04725890707615192, 0.350649364643993],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.2682375511449686, 0.07088836061422787, \
0.5259740469659895]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.2682375511449686, 0.07088836061422787,
0.5259740469659895];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.2682375511449686, 0.07088836061422787, 0.5259740469659895],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.257210633057063, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {19.721239804937955, 1.8561166875235724},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.42016168622136263`, 0.014930674124276067`,
0.6009856586010134], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.28010779081424175`, 0.009953782749517378,
0.4006571057340089],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.42016168622136263, 0.014930674124276067, \
0.6009856586010134]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.42016168622136263`, 0.014930674124276067`,
0.6009856586010134];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.42016168622136263`, 0.014930674124276067`, 0.6009856586010134],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.721239804937955, 1.8561166875235724},
BaseStyle->"Graphics"]}, {
InsetBox["", {19.48922521899751, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.0974471463817026, 0.15331340811884275`,
0.6441585730658332], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.0649647642544684, 0.10220893874589518`, 0.4294390487105555],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.0974471463817026, 0.15331340811884275, \
0.6441585730658332]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.0974471463817026, 0.15331340811884275`,
0.6441585730658332];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.0974471463817026, 0.15331340811884275`, 0.6441585730658332],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.48922521899751, 2.784175031285358},
BaseStyle->"Graphics"]},
InsetBox["", {20.18526897681885, 3.2482042031662512},
Automatic, {0., 0.}], {
InsetBox["", {19.953254390878403, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.48326250634502, 0.41643972363782833`, 0.9634060769151316],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.32217500423001333`, 0.2776264824252189, 0.642270717943421],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.48326250634502, 0.41643972363782833, \
0.9634060769151316]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.48326250634502, 0.41643972363782833`, 0.9634060769151316];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.48326250634502, 0.41643972363782833`, 0.9634060769151316],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {19.953254390878403, 2.784175031285358},
BaseStyle->"Graphics"]}, {
InsetBox["", {20.417283562759295, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.09711697022358612, 0.3691350100179467, 0.9914594532993732],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.06474464681572409, 0.24609000667863112`, 0.6609729688662489],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.09711697022358612, 0.3691350100179467, \
0.9914594532993732]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.09711697022358612, 0.3691350100179467,
0.9914594532993732];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.09711697022358612, 0.3691350100179467, 0.9914594532993732],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {20.417283562759295, 2.784175031285358},
BaseStyle->"Graphics"]},
InsetBox["", {20.88131273464019, 3.7122333750471443},
Automatic, {0., 0.}], {
InsetBox["", {20.649298148699742, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.7424928232005303, 0.38471821301996467`,
0.8724051078645938], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.49499521546702024`, 0.25647880867997647`,
0.5816034052430625],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.7424928232005303, 0.38471821301996467, \
0.8724051078645938]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.7424928232005303, 0.38471821301996467`,
0.8724051078645938];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.7424928232005303, 0.38471821301996467`, 0.8724051078645938],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {20.649298148699742, 3.2482042031662512},
BaseStyle->"Graphics"]}, {
InsetBox["", {21.113327320580638, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.6384092191102155, 0.23388227782499715`,
0.7159821665410344], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.425606146073477, 0.1559215185499981, 0.47732144436068963`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.6384092191102155, 0.23388227782499715, \
0.7159821665410344]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.6384092191102155, 0.23388227782499715`,
0.7159821665410344];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.6384092191102155, 0.23388227782499715`, 0.7159821665410344],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {21.113327320580638, 3.2482042031662512},
BaseStyle->"Graphics"]},
InsetBox["", {22.505414836223316, 4.1762625469280374},
Automatic, {0., 0.}],
InsetBox["", {21.809371078401977, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {21.57735649246153, 3.2482042031662512},
Automatic, {0., 0.}], {
InsetBox["", {21.34534190652108, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.1224254318738991, 0.07590728927076396,
0.34112955975140036`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.0816169545825994, 0.05060485951384264, 0.22741970650093357`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.1224254318738991, 0.07590728927076396, \
0.34112955975140036]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.1224254318738991, 0.07590728927076396,
0.34112955975140036`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.1224254318738991, 0.07590728927076396, 0.34112955975140036`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {21.34534190652108, 2.784175031285358},
BaseStyle->"Graphics"]},
InsetBox["", {21.809371078401977, 2.784175031285358},
Automatic, {0., 0.}], {
InsetBox["", {21.57735649246153, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.027982248477667948`, 0.15361251888652183`,
0.3385354759376973], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.0186548323184453, 0.10240834592434789`, 0.2256903172917982],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.027982248477667948, 0.15361251888652183, \
0.3385354759376973]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.027982248477667948`, 0.15361251888652183`,
0.3385354759376973];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.027982248477667948`, 0.15361251888652183`, 0.3385354759376973],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {21.57735649246153, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {22.04138566434242, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.12542819248604786`, 0.12700129080123657`,
0.30038861256874205`], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.08361879499069858, 0.08466752720082438,
0.20025907504582804`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.12542819248604786, 0.12700129080123657, \
0.30038861256874205]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.12542819248604786`, 0.12700129080123657`,
0.30038861256874205`];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.12542819248604786`, 0.12700129080123657`, 0.30038861256874205`],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {22.04138566434242, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {22.04138566434242, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.029413773342207072`, 0.2990257775892635,
0.5425091930812536], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.01960918222813805, 0.19935051839284235`, 0.3616727953875024],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.029413773342207072, 0.2990257775892635, \
0.5425091930812536]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.029413773342207072`, 0.2990257775892635,
0.5425091930812536];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.029413773342207072`, 0.2990257775892635, 0.5425091930812536],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {22.04138566434242, 3.2482042031662512},
BaseStyle->"Graphics"]},
InsetBox["", {23.201458594044656, 3.7122333750471443},
Automatic, {0., 0.}],
InsetBox["", {22.969444008104208, 3.2482042031662512},
Automatic, {0., 0.}],
InsetBox["", {22.73742942216376, 2.784175031285358}, Automatic, {0., 0.}],\
{InsetBox["", {22.505414836223316, 2.320145859404465}, Automatic, {0., 0.}],
InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.30965128981715373`, 0.261749424629925, 0.645996244832135],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.20643419321143583`, 0.17449961641995002`,
0.43066416322142337`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.30965128981715373, 0.261749424629925, \
0.645996244832135]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.30965128981715373`, 0.261749424629925, 0.645996244832135];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.30965128981715373`, 0.261749424629925, 0.645996244832135],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {22.505414836223316, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {22.969444008104208, 2.320145859404465},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.3361671403631452, 0.30684600603580603`,
0.6732478874769281], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.22411142690876348`, 0.2045640040238707,
0.44883192498461877`],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.3361671403631452, 0.30684600603580603, \
0.6732478874769281]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.3361671403631452, 0.30684600603580603`,
0.6732478874769281];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.3361671403631452, 0.30684600603580603`, 0.6732478874769281],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {22.969444008104208, 2.320145859404465},
BaseStyle->"Graphics"]}, {
InsetBox["", {23.201458594044656, 2.784175031285358},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.25200540384164594`, 0.38713930862277746`,
0.7676644591520256], RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.1680036025610973, 0.25809287241518497`, 0.5117763061013505],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
AbsoluteCurrentValue[Magnification]}],
PlotRangePadding->None],
"RGBColor[0.25200540384164594, 0.38713930862277746, \
0.7676644591520256]"],
Appearance->None,
BaseStyle->{},
BaselinePosition->Baseline,
ButtonFunction:>With[{Typeset`box$ = EvaluationBox[]},
If[
Not[
AbsoluteCurrentValue["Deployed"]],
SelectionMove[Typeset`box$, All, Expression];
FrontEnd`Private`$ColorSelectorInitialAlpha = 1;
FrontEnd`Private`$ColorSelectorInitialColor =
RGBColor[
0.25200540384164594`, 0.38713930862277746`,
0.7676644591520256];
FrontEnd`Private`$ColorSelectorUseMakeBoxes = True;
MathLink`CallFrontEnd[
FrontEnd`AttachCell[Typeset`box$,
FrontEndResource["RGBColorValueSelector"], {
0, {Left, Bottom}}, {Left, Top},
"ClosingActions" -> {
"SelectionDeparture", "ParentChanged",
"EvaluatorQuit"}]]]],
DefaultBaseStyle->{},
Evaluator->Automatic,
Method->"Preemptive"],
RGBColor[
0.25200540384164594`, 0.38713930862277746`, 0.7676644591520256],
Editable->False,
Selectable->False],
Background->GrayLevel[1],
FrameMargins->{{0, 0}, {0, 0}},
FrameStyle->GrayLevel[1],
RoundingRadius->2,
StripOnInput->False], {23.201458594044656, 2.784175031285358},
BaseStyle->"Graphics"]}, {
InsetBox["", {23.4334731799851, 3.2482042031662512},
Automatic, {0., 0.}], InsetBox[
FrameBox[
InterpretationBox[
ButtonBox[
TooltipBox[
GraphicsBox[{
{GrayLevel[0], RectangleBox[{0, 0}]},
{GrayLevel[0], RectangleBox[{1, -1}]},
{RGBColor[
0.4879686217092509, 0.3462686627780531, 0.6648037649522518],
RectangleBox[{0, -1}, {2, 1}]}},
AspectRatio->1,
Frame->True,
FrameStyle->RGBColor[
0.325312414472834, 0.23084577518536875`, 0.4432025099681679],
FrameTicks->None,
ImageSize->
Dynamic[{
Automatic, 1.35 CurrentValue["FontCapHeight"]/
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