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Gamut mapped LCH to RGB transform
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""" | |
lch2rgb_gamutmapped.py | |
Gamut mapped LCH to RGB transform | |
Copyright (c) 2014 Jack Doerner | |
Permission is hereby granted, free of charge, to any person obtaining a copy | |
of this software and associated documentation files (the "Software"), to deal | |
in the Software without restriction, including without limitation the rights | |
to use, copy, modify, merge, publish, distribute, sublicense, and/or sell | |
copies of the Software, and to permit persons to whom the Software is | |
furnished to do so, subject to the following conditions: | |
The above copyright notice and this permission notice shall be included in | |
all copies or substantial portions of the Software. | |
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR | |
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, | |
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE | |
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER | |
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, | |
OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN | |
THE SOFTWARE. | |
""" | |
import numpy | |
import skimage.color | |
import scipy.optimize | |
import math | |
def lch2rgb_csolve(L, C, H, r_target=None, g_target=None, b_target=None, epsilon=0.0001): | |
# Here we use numpy's nonlinear equation solver to find a color with the same L and H | |
# values, but C scaled until the target r, g, or b is met. The color must first be | |
# converted to lab. In the future it may make sense for this function to call a separate | |
# lab conversion function. | |
# note: this method is very slow. A closed-form solution would be much better, | |
# but I haven't come up with one yet. | |
A = math.cos(H) | |
B = math.sin(H) | |
def equation(delta): | |
lab = numpy.asarray([L, A*delta, B*delta]).reshape((1,1,3)) | |
(r, g, b) = skimage.color.lab2rgb(lab).reshape((3,)) | |
result = 0 | |
if (not (r_target is None)): | |
result += ((r - r_target) * 100) **2 | |
if (not (g_target is None)): | |
result += ((g - g_target) * 100) **2 | |
if (not (b_target is None)): | |
result += ((b - b_target) * 100) **2 | |
return result | |
return scipy.optimize.root(equation, C, method='hybr', tol=epsilon) | |
def lch2rgb_relativeColorimetric(lch, epsilon=0.0001): | |
# Call this method with a single pixel's lch color value to find the closest in-gamut color | |
# Conversion uses a method similar to the 'relative colorimetric' rendering intent used in | |
# converting between RGB colorspaces. That is, Luminance and Hue are preserved, but Chroma | |
# (saturation) is reduced until a valid value is found. | |
# Input pixels should be numpy arrays with the shape (1,1,3) or (3,). | |
lch = lch.copy() | |
lch = lch.reshape((1,1,3)) | |
lch[0,0,0] = max(min(100, lch[0,0,0]),0) | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
if (rgb[0,0,0] > 1): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], r_target = 1, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
elif (rgb[0,0,0] < 0): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], r_target = 0, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
if (rgb[0,0,1] > 1): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], g_target = 1, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
elif (rgb[0,0,1] < 0): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], g_target = 0, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
if (rgb[0,0,2] > 1): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], b_target = 1, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
elif (rgb[0,0,2] < 0): | |
lch[0,0,1] = lch2rgb_csolve(lch[0,0,0], lch[0,0,1], lch[0,0,2], b_target = 0, epsilon = epsilon).x - epsilon | |
rgb = skimage.color.lab2rgb(skimage.color.lch2lab(lch)) | |
return rgb |
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