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?