Question

I am trying to convert an image from RGB to XYZ using scikit-image. I found out that there are some differences depending the input type:

from numpy import array,uint8
import skimage.color

rgb = array([array([[56,79,132],[255,100,70]])]) 
i1 = skimage.color.rgb2xyz(rgb)#rgb.dtype ->dtype('int32')
i2 = skimage.color.rgb2xyz(rgb.astype(uint8))
i3 = skimage.color.rgb2xyz(rgb.astype(float))

print i1[0,1,:]
print i2[0,1,:]
print i3[0,1,:]

This is the output:

[  5.55183419e-09   4.73226247e-09   3.02426596e-09]
[ 0.46907236  0.3082294   0.09272133]
[ 240644.54537677  153080.21825017   39214.47581034]

The cause of the differences is the function img_to_float which is used inside rgb2xyz (see this question).

But I am wondering: What is the correct way to use rgb2xyz?

Regarding this question there are multiple solutions, depending on the formula, but again: what is the correct image type that is required by rgb2xyz? It seems that unit8, but why? Thanks!

Était-ce utile?

La solution

The following code should be self explanatory, but floating point values should have a range in (0, 1), and integer type have their full range mapped to (0, 1) (for unsigned types) or (-1, 1) (for signed types):

>>> from numpy import int32
>>> skimage.color.rgb2xyz((rgb / 255 * (2**31 - 1)).astype(int32))
array([[[ 0.08590003,  0.08097913,  0.2293394 ],
        [ 0.46907236,  0.3082294 ,  0.09272133]]])
>>> skimage.color.rgb2xyz(rgb.astype(uint8))
array([[[ 0.08590003,  0.08097913,  0.2293394 ],
        [ 0.46907236,  0.3082294 ,  0.09272133]]])
>>> skimage.color.rgb2xyz(rgb.astype(float) / 255)
array([[[ 0.08590003,  0.08097913,  0.2293394 ],
        [ 0.46907236,  0.3082294 ,  0.09272133]]])
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