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@ojdo
Created April 7, 2021 16:40
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turbo subset - subsampling turbo colors for discrete color palette
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.patches as mpatches
from matplotlib.collections import PatchCollection
from matplotlib.colors import rgb_to_hsv, to_hex
turbo_colormap_data = np.array([
[0.18995, 0.07176, 0.23217],
[0.19483, 0.08339, 0.26149],
[0.19956, 0.09498, 0.29024],
[0.20415, 0.10652, 0.31844],
[0.20860, 0.11802, 0.34607],
[0.21291, 0.12947, 0.37314],
[0.21708, 0.14087, 0.39964],
[0.22111, 0.15223, 0.42558],
[0.22500, 0.16354, 0.45096],
[0.22875, 0.17481, 0.47578],
[0.23236, 0.18603, 0.50004],
[0.23582, 0.19720, 0.52373],
[0.23915, 0.20833, 0.54686],
[0.24234, 0.21941, 0.56942],
[0.24539, 0.23044, 0.59142],
[0.24830, 0.24143, 0.61286],
[0.25107, 0.25237, 0.63374],
[0.25369, 0.26327, 0.65406],
[0.25618, 0.27412, 0.67381],
[0.25853, 0.28492, 0.69300],
[0.26074, 0.29568, 0.71162],
[0.26280, 0.30639, 0.72968],
[0.26473, 0.31706, 0.74718],
[0.26652, 0.32768, 0.76412],
[0.26816, 0.33825, 0.78050],
[0.26967, 0.34878, 0.79631],
[0.27103, 0.35926, 0.81156],
[0.27226, 0.36970, 0.82624],
[0.27334, 0.38008, 0.84037],
[0.27429, 0.39043, 0.85393],
[0.27509, 0.40072, 0.86692],
[0.27576, 0.41097, 0.87936],
[0.27628, 0.42118, 0.89123],
[0.27667, 0.43134, 0.90254],
[0.27691, 0.44145, 0.91328],
[0.27701, 0.45152, 0.92347],
[0.27698, 0.46153, 0.93309],
[0.27680, 0.47151, 0.94214],
[0.27648, 0.48144, 0.95064],
[0.27603, 0.49132, 0.95857],
[0.27543, 0.50115, 0.96594],
[0.27469, 0.51094, 0.97275],
[0.27381, 0.52069, 0.97899],
[0.27273, 0.53040, 0.98461],
[0.27106, 0.54015, 0.98930],
[0.26878, 0.54995, 0.99303],
[0.26592, 0.55979, 0.99583],
[0.26252, 0.56967, 0.99773],
[0.25862, 0.57958, 0.99876],
[0.25425, 0.58950, 0.99896],
[0.24946, 0.59943, 0.99835],
[0.24427, 0.60937, 0.99697],
[0.23874, 0.61931, 0.99485],
[0.23288, 0.62923, 0.99202],
[0.22676, 0.63913, 0.98851],
[0.22039, 0.64901, 0.98436],
[0.21382, 0.65886, 0.97959],
[0.20708, 0.66866, 0.97423],
[0.20021, 0.67842, 0.96833],
[0.19326, 0.68812, 0.96190],
[0.18625, 0.69775, 0.95498],
[0.17923, 0.70732, 0.94761],
[0.17223, 0.71680, 0.93981],
[0.16529, 0.72620, 0.93161],
[0.15844, 0.73551, 0.92305],
[0.15173, 0.74472, 0.91416],
[0.14519, 0.75381, 0.90496],
[0.13886, 0.76279, 0.89550],
[0.13278, 0.77165, 0.88580],
[0.12698, 0.78037, 0.87590],
[0.12151, 0.78896, 0.86581],
[0.11639, 0.79740, 0.85559],
[0.11167, 0.80569, 0.84525],
[0.10738, 0.81381, 0.83484],
[0.10357, 0.82177, 0.82437],
[0.10026, 0.82955, 0.81389],
[0.09750, 0.83714, 0.80342],
[0.09532, 0.84455, 0.79299],
[0.09377, 0.85175, 0.78264],
[0.09287, 0.85875, 0.77240],
[0.09267, 0.86554, 0.76230],
[0.09320, 0.87211, 0.75237],
[0.09451, 0.87844, 0.74265],
[0.09662, 0.88454, 0.73316],
[0.09958, 0.89040, 0.72393],
[0.10342, 0.89600, 0.71500],
[0.10815, 0.90142, 0.70599],
[0.11374, 0.90673, 0.69651],
[0.12014, 0.91193, 0.68660],
[0.12733, 0.91701, 0.67627],
[0.13526, 0.92197, 0.66556],
[0.14391, 0.92680, 0.65448],
[0.15323, 0.93151, 0.64308],
[0.16319, 0.93609, 0.63137],
[0.17377, 0.94053, 0.61938],
[0.18491, 0.94484, 0.60713],
[0.19659, 0.94901, 0.59466],
[0.20877, 0.95304, 0.58199],
[0.22142, 0.95692, 0.56914],
[0.23449, 0.96065, 0.55614],
[0.24797, 0.96423, 0.54303],
[0.26180, 0.96765, 0.52981],
[0.27597, 0.97092, 0.51653],
[0.29042, 0.97403, 0.50321],
[0.30513, 0.97697, 0.48987],
[0.32006, 0.97974, 0.47654],
[0.33517, 0.98234, 0.46325],
[0.35043, 0.98477, 0.45002],
[0.36581, 0.98702, 0.43688],
[0.38127, 0.98909, 0.42386],
[0.39678, 0.99098, 0.41098],
[0.41229, 0.99268, 0.39826],
[0.42778, 0.99419, 0.38575],
[0.44321, 0.99551, 0.37345],
[0.45854, 0.99663, 0.36140],
[0.47375, 0.99755, 0.34963],
[0.48879, 0.99828, 0.33816],
[0.50362, 0.99879, 0.32701],
[0.51822, 0.99910, 0.31622],
[0.53255, 0.99919, 0.30581],
[0.54658, 0.99907, 0.29581],
[0.56026, 0.99873, 0.28623],
[0.57357, 0.99817, 0.27712],
[0.58646, 0.99739, 0.26849],
[0.59891, 0.99638, 0.26038],
[0.61088, 0.99514, 0.25280],
[0.62233, 0.99366, 0.24579],
[0.63323, 0.99195, 0.23937],
[0.64362, 0.98999, 0.23356],
[0.65394, 0.98775, 0.22835],
[0.66428, 0.98524, 0.22370],
[0.67462, 0.98246, 0.21960],
[0.68494, 0.97941, 0.21602],
[0.69525, 0.97610, 0.21294],
[0.70553, 0.97255, 0.21032],
[0.71577, 0.96875, 0.20815],
[0.72596, 0.96470, 0.20640],
[0.73610, 0.96043, 0.20504],
[0.74617, 0.95593, 0.20406],
[0.75617, 0.95121, 0.20343],
[0.76608, 0.94627, 0.20311],
[0.77591, 0.94113, 0.20310],
[0.78563, 0.93579, 0.20336],
[0.79524, 0.93025, 0.20386],
[0.80473, 0.92452, 0.20459],
[0.81410, 0.91861, 0.20552],
[0.82333, 0.91253, 0.20663],
[0.83241, 0.90627, 0.20788],
[0.84133, 0.89986, 0.20926],
[0.85010, 0.89328, 0.21074],
[0.85868, 0.88655, 0.21230],
[0.86709, 0.87968, 0.21391],
[0.87530, 0.87267, 0.21555],
[0.88331, 0.86553, 0.21719],
[0.89112, 0.85826, 0.21880],
[0.89870, 0.85087, 0.22038],
[0.90605, 0.84337, 0.22188],
[0.91317, 0.83576, 0.22328],
[0.92004, 0.82806, 0.22456],
[0.92666, 0.82025, 0.22570],
[0.93301, 0.81236, 0.22667],
[0.93909, 0.80439, 0.22744],
[0.94489, 0.79634, 0.22800],
[0.95039, 0.78823, 0.22831],
[0.95560, 0.78005, 0.22836],
[0.96049, 0.77181, 0.22811],
[0.96507, 0.76352, 0.22754],
[0.96931, 0.75519, 0.22663],
[0.97323, 0.74682, 0.22536],
[0.97679, 0.73842, 0.22369],
[0.98000, 0.73000, 0.22161],
[0.98289, 0.72140, 0.21918],
[0.98549, 0.71250, 0.21650],
[0.98781, 0.70330, 0.21358],
[0.98986, 0.69382, 0.21043],
[0.99163, 0.68408, 0.20706],
[0.99314, 0.67408, 0.20348],
[0.99438, 0.66386, 0.19971],
[0.99535, 0.65341, 0.19577],
[0.99607, 0.64277, 0.19165],
[0.99654, 0.63193, 0.18738],
[0.99675, 0.62093, 0.18297],
[0.99672, 0.60977, 0.17842],
[0.99644, 0.59846, 0.17376],
[0.99593, 0.58703, 0.16899],
[0.99517, 0.57549, 0.16412],
[0.99419, 0.56386, 0.15918],
[0.99297, 0.55214, 0.15417],
[0.99153, 0.54036, 0.14910],
[0.98987, 0.52854, 0.14398],
[0.98799, 0.51667, 0.13883],
[0.98590, 0.50479, 0.13367],
[0.98360, 0.49291, 0.12849],
[0.98108, 0.48104, 0.12332],
[0.97837, 0.46920, 0.11817],
[0.97545, 0.45740, 0.11305],
[0.97234, 0.44565, 0.10797],
[0.96904, 0.43399, 0.10294],
[0.96555, 0.42241, 0.09798],
[0.96187, 0.41093, 0.09310],
[0.95801, 0.39958, 0.08831],
[0.95398, 0.38836, 0.08362],
[0.94977, 0.37729, 0.07905],
[0.94538, 0.36638, 0.07461],
[0.94084, 0.35566, 0.07031],
[0.93612, 0.34513, 0.06616],
[0.93125, 0.33482, 0.06218],
[0.92623, 0.32473, 0.05837],
[0.92105, 0.31489, 0.05475],
[0.91572, 0.30530, 0.05134],
[0.91024, 0.29599, 0.04814],
[0.90463, 0.28696, 0.04516],
[0.89888, 0.27824, 0.04243],
[0.89298, 0.26981, 0.03993],
[0.88691, 0.26152, 0.03753],
[0.88066, 0.25334, 0.03521],
[0.87422, 0.24526, 0.03297],
[0.86760, 0.23730, 0.03082],
[0.86079, 0.22945, 0.02875],
[0.85380, 0.22170, 0.02677],
[0.84662, 0.21407, 0.02487],
[0.83926, 0.20654, 0.02305],
[0.83172, 0.19912, 0.02131],
[0.82399, 0.19182, 0.01966],
[0.81608, 0.18462, 0.01809],
[0.80799, 0.17753, 0.01660],
[0.79971, 0.17055, 0.01520],
[0.79125, 0.16368, 0.01387],
[0.78260, 0.15693, 0.01264],
[0.77377, 0.15028, 0.01148],
[0.76476, 0.14374, 0.01041],
[0.75556, 0.13731, 0.00942],
[0.74617, 0.13098, 0.00851],
[0.73661, 0.12477, 0.00769],
[0.72686, 0.11867, 0.00695],
[0.71692, 0.11268, 0.00629],
[0.70680, 0.10680, 0.00571],
[0.69650, 0.10102, 0.00522],
[0.68602, 0.09536, 0.00481],
[0.67535, 0.08980, 0.00449],
[0.66449, 0.08436, 0.00424],
[0.65345, 0.07902, 0.00408],
[0.64223, 0.07380, 0.00401],
[0.63082, 0.06868, 0.00401],
[0.61923, 0.06367, 0.00410],
[0.60746, 0.05878, 0.00427],
[0.59550, 0.05399, 0.00453],
[0.58336, 0.04931, 0.00486],
[0.57103, 0.04474, 0.00529],
[0.55852, 0.04028, 0.00579],
[0.54583, 0.03593, 0.00638],
[0.53295, 0.03169, 0.00705],
[0.51989, 0.02756, 0.00780],
[0.50664, 0.02354, 0.00863],
[0.49321, 0.01963, 0.00955],
[0.47960, 0.01583, 0.01055]
])
def blend(color1, color2, alpha):
"""Blend two colors with given opacity (alpha level).
>>> blend([1.0, 0.5, 0.0], [1.0, 1.0, 1.0], 0.5)
[1.0, 0.75, 0.5]
"""
return [alpha * c1 + (1 - alpha) * c2
for (c1, c2) in zip(color1, color2)]
def to_rgb255(rgb):
"""Convert color to RGB string.
>>> print(to_rgb255([1.0, 1.0, 1.0]))
R 255
G 255
B 255
"""
r, g, b = (int(round(255 * c)) for c in rgb)
return f'R {r:03}\nG {g:03}\nB {b:03}'
# ----
turbo_subset = turbo_colormap_data[::22]
# ----
alphas = [1.0, 0.8, 0.6, 0.4]
bg_color = [1.0, 1.0, 1.0]
fig, ax = plt.subplots(figsize=(16, 8.5))
rects = []
for i, rgb in enumerate(turbo_subset):
for j, alpha in enumerate(alphas):
x, y = 41*i, 61*j
col = blend(rgb, bg_color, alpha)
rect = mpatches.Rectangle(
xy=(x, y),
width=40,
height=60,
facecolor=col,
edgecolor=None,
)
rects.append(rect)
ax.text(
s='\n'.join([to_rgb255(col),
to_hex(col).upper()]),
x=(x + 4),
y=(y + 4),
c=('#fcfcfc' if sum(col) <= 1.6 else '#191919')
)
print(f"{i+1} colors.")
ax.add_collection(PatchCollection(rects, match_original=True))
plt.axis('equal')
plt.axis('off')
plt.tight_layout()
for ext in ['png', 'pdf', 'svg']:
plt.savefig(f'turbo_subset.{ext}', bbox_inches='tight')
plt.show()
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