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I have a NxN matrix which I want to split into non-overlap KxK block. For each block, I want to assign new values to the elements.

Since this looks like a good place for a generator, I implemented:

def extracted_patches(im, top_left, patch_size, grid_size):
    '''Extract patches in row-major order following a specific configuration

    Parameters
    ----------
    im : the input image (2D numpy array)
    top_left : (y,x) coordinate of the top left point (e.g. (3,5))
    grid_size : (cy, cx) how many patches in the y-direction and in the x-direction
    patch_size : (h, w) how many pixels for the size of each patch

    Returns
    -------
    a generator that goes through each patch (a numpy array view) in row-major order
    '''
    for i in xrange(grid_size[0]):
        for j in xrange(grid_size[1]):
            yield im[top_left[0] + patch_size[0]*i : top_left[0] + patch_size[0]*(i+1)
                    ,top_left[1] + patch_size[1]*j : top_left[1] + patch_size[1]*(j+1)]

Then when I try to change the value of each patch, the assignment change the variable value instead of the value the generator gives

output_im = np.zeros((patch_size[0]*grid_size[0], patch_size[1]*grid_size[1]))        
output_im_it = extracted_patches(output_im, (0,0), patch_size, grid_size)

for i in xrange(grid_size[0]*grid_size[1]):
    output_im_it = np.random.random(patch_size)

Can my generator be mutable?

share|improve this question
    
I'm not 100% sure because I don't have numpy installed on the computer I am at right now, but you should be able to overwrite the patches in-place by just adding "[:]", something like this: for patch in extracted_patches(...): patch[:] = np.random.random(patch_size) – Chris Perkins Mar 3 '11 at 18:06
    
That would be assigning to the generator object. You want to assign to (slices of) the values it yields. – Jouni K. Seppänen Mar 3 '11 at 18:10
up vote 2 down vote accepted

As with any variables holding a numpy array, to change the value "pointed to" you want to avoid assigning to the variable but assign to a slice of it. Try this:

for submat in output_im_it:
     submat[:] = np.random.random(patch_size)

As a response to your edit: it seems you have confused the generator object with the values it yields. You can't assign to slices of the generator object itself. You can assign to slices of the numpy arrays, which you can get with e.g. output_im_it.next() or with a for loop, as above.

share|improve this answer
    
I get TypeError: 'generator' object does not support item assignment – Dat Chu Mar 3 '11 at 18:05
    
Works for me. What exactly are you running? If you try to assign to output_im_it[:], that would give that error message. – Jouni K. Seppänen Mar 3 '11 at 18:09
    
Ah, it works now when I change the for loop as well. Is there a way to not having to change my for loop? – Dat Chu Mar 3 '11 at 18:14
    
I guess you could do output_im_it.next()[:] = ... if you wanted to, but it would seem unnecessarily complicated to me. – Jouni K. Seppänen Mar 3 '11 at 18:15
    
Thank you. My for loop is a bit more complicated than the sample I gave so I would prefer to call next() myself. – Dat Chu Mar 3 '11 at 18:20

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