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I'm swapping values of a multidimensional numpy array in Python. But the code is too slow. Another thread says:

Typically, you avoid iterating through them directly. ... there's a good chance that it's easy to vectorize.

So, do you know a way to optimize the following code?

import PIL.Image
import numpy

pil_image = PIL.Image.open('Image.jpg').convert('RGB')
cv_image = numpy.array(pil_image)
# Convert RGB to BGR
for y in range(len(cv_image)):
    for x in range(len(cv_image[y])):
        (cv_image[y][x][0], cv_image[y][x][2]) = (cv_image[y][x][2],
            cv_image[y][x][0])

For an 509x359 image this last more than one second, which is way too much. It should perform it's task in no time.

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2  
on a side note, cv_image[y][x][0] is generally written cv_image[y, x, 0] in numpy/python. –  Bi Rico Jul 3 '12 at 19:12
    
Thanks. Now it only lasts 0.406 seconds. –  rynd Jul 3 '12 at 19:25
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1 Answer 1

up vote 5 down vote accepted

How about this single operation inverting the matrix along the last axis?

cv_image = cv_image[:,:,::-1]
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2  
cv_image[...,::-1] –  JBernardo Jul 3 '12 at 19:29
    
There's something strange with this. Both types (source and result) are numpy.ndarray. When iterating through them and comparing len(...) or the values (reversely), there can't be found a difference. But when trying to show the image with cv2.imshow it says: error: (-206) Unrecognized or unsupported array type (while without the conversion the image is displayed [with wrong colors]). –  rynd Jul 3 '12 at 19:39
    
I use the line: new_cv_image = cv_image[:, :, ::-1]. If I change one value in cv_image: cv_image[0, 0, 2] = 128, it is also changed in new_cv_image, although id(...) returns a different value for each. –  rynd Jul 3 '12 at 20:04
1  
You could try cv_image = cv_image[..., ::-1].copy(). imshow is probably expecting a continuous array in memory. –  Bi Rico Jul 3 '12 at 20:12
    
@Bago: I came to the same conclusion (source: mbk.ps.uci.edu/python.html , search "copy"). This works perfectly well! I measured 0.0 seconds (no time). I would say: Goal achieved. –  rynd Jul 3 '12 at 20:21
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