I solved a problem with a loop, but it is both slow and unpythonic. I'm looking for a mask solution. If I were interested in pixels with values for a specific channel, that would be simple:

img[img[:,:,0]==64] = [0,0,0]

to turn them all black. I want to change a specific color, e.g. [192,0,128], so I need all three channels, something like img[ img[:,:,0]==192 and img[:,:,1]==0 and img[:,:,2]==128]=[0,0,0] but of course this is wrong. I also tried np.all(img==[192,0,128]) but it didn't work either.

2 Answers 2


You were almost there:

np.all(img == [192,0,128], axis=-1)

gives what you're looking for. You need to specify an axis to do the dimension reduction, which corresponds to the color channel axis here.


OK, I just used numpy.logical_and() and it did the trick!

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