Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to convert a PIL image into an array using NumPy. I then want to convert that array into Lab values, modify the values and then convert the array back in to an image and save the image. I have the following code:

import Image, color, numpy

# Open the image file
src = Image.open("face-him.jpg")

# Attempt to ensure image is RGB
src = src.convert(mode="RGB")

# Create array of image using numpy
srcArray = numpy.asarray(src)

# Convert array from RGB into Lab
srcArray = color.rgb2lab(srcArray)

# Modify array here

# Convert array back into Lab
end = color.lab2rgb(srcArray)

# Create image from array
final = Image.fromarray(end, "RGB")

# Save
final.save("out.jpg")

This code is dependent on PIL, NumPy and color. color can be found in the SciPy trunk here. I downloaded the color.py file along with certain colordata .txt files. I modified the color.py so that it can run independently from the SciPy source and it all seems to work fine - values in the array are changed when I run conversions.

My problem is that when I run the above code which simply converts an image to Lab, then back to RGB and saves it I get the following image back:

alt text

What is going wrong? Is it the fact I am using the functions from color.py?

For reference:
Source Image - face-him.jpg
All source files required to test - colour-test.zip

share|improve this question
1  
Are you using an old version of Scipy? Importing color keeps failing; all the functions scipy_base (doesn't exist for me) tries to use are standard Numpy functions (asarray, swapaxes, etc). Modified the first two lines of color.py to import numpy as sb and import numpy as scipy –  Nick T Jul 12 '10 at 13:50

2 Answers 2

up vote 9 down vote accepted

Without having tried it, scaling errors are common in converting colors:
RGB is bytes 0 .. 255, e.g. yellow [255,255,0], whereas rgb2xyz() etc. work on triples of floats, yellow [1.,1.,0].
(color.py has no range checks: lab2rgb( rgb2lab([255,255,0]) ) is junk.)

In IPython, %run main.py, then print corners of srcArray and end ?

Added 13July: for the record / for google, here are NumPy idioms to pack, unpack and convert RGB image arrays:

    # unpack image array, 10 x 5 x 3 -> r g b --
img = np.arange( 10*5*3 ).reshape(( 10,5,3 ))
print "img.shape:", img.shape
r,g,b = img.transpose( 2,0,1 )  # 3 10 5
print "r.shape:", r.shape

    # pack 10 x 5 r g b -> 10 x 5 x 3 again --
rgb = np.array(( r, g, b )).transpose( 1,2,0 )  # 10 5 3 again
print "rgb.shape:", rgb.shape
assert (rgb == img).all()

    # rgb 0 .. 255 <-> float 0 .. 1 --
imgfloat = img.astype(np.float32) / 255.
img8 = (imgfloat * 255).round().astype(np.uint8)  
assert (img == img8).all()
share|improve this answer
    
Thanks, this comment was more helpful for my problem. However, Nick T's answer did help me understand the way numpy works a little better. –  betamax Jul 15 '10 at 9:17

As Denis pointed out, there are no range checks in lab2rgb or rgb2lab, and rgb2lab appears to expect values in the range [0,1].

>>> a = numpy.array([[1,2,3],[4,5,6],[7,8,9]])
>>> a
array([[1, 2, 3],
       [4, 5, 6],
       [7, 8, 9]])
>>> color.lab2rgb(color.rgb2lab(a))
array([[ -1.74361805e-01,   1.39592186e-03,   1.24595808e-01],
       [  1.18478213e+00,   1.15700655e+00,   1.13767806e+00],
       [  2.62956273e+00,   2.38687422e+00,   2.21535897e+00]])
>>> from __future__ import division
>>> b = a/10
>>> b
array([[ 0.1,  0.2,  0.3],
       [ 0.4,  0.5,  0.6],
       [ 0.7,  0.8,  0.9]])
>>> color.lab2rgb(color.rgb2lab(a))
array([[ 0.1,  0.2,  0.3],
       [ 0.4,  0.5,  0.6],
       [ 0.7,  0.8,  0.9]])

In color.py, the xyz2lab and lab2xyz functions are doing some math that I can't deduce at a glance (I'm not that familiar with numpy or image transforms).

Edit (this code fixes the problem):

PIL gives you numbers [0,255], try scaling those down to [0,1] before passing to the rgb2lab function and back up when coming out. e.g.:

#from __future__ import division # (if required)
[...]
# Create array of image using numpy
srcArray = numpy.asarray(src)/255

# Convert array from RGB into Lab
srcArray = color.rgb2lab(srcArray)

# Convert array back into Lab
end = color.lab2rgb(srcArray)*255
end = end.astype(numpy.uint8)
share|improve this answer
    
On the line c = color.lab2rgb(a) should you not have done c = color.lab2rgb(b)? Because otherwise it is trying to convert the original 1,2,3 matrix from Lab to RGB.. –  betamax Jul 12 '10 at 14:12
    
Oops, fixed. Still same (mangled) result. –  Nick T Jul 12 '10 at 15:18
    
Edited again, problem solved for me (py 2.6) Not sure if the future division works on older versions, there has to be some numpy function that does it though. –  Nick T Jul 12 '10 at 15:36

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.