Following up to this question (and jorgeca's answer): Fast Way to slice image into overlapping patches and merge patches to image I want to add an offset to the indices of the patchified array, i.e:

```
A = np.arange(W*H).reshape(H,W)
P = patchify(A,(X,Y))
```

Assuming X,Y are odd numbers, the size of P will be equal to W-X+1,H-Y+1, hence the pixel centered in P[0,0] will actually correspond to A[(Y-1)/2,(X-1)/2].

Is there any way I can offset (without copying any data) the indices of P to have perfect correspondence?

For reference, here is the existing patchify function:

```
def patchify(img, patch_shape):
img = np.ascontiguousarray(img) # won't make a copy if not needed
X, Y = img.shape
x, y = patch_shape
shape = ((X-x+1), (Y-y+1), x, y) # number of patches, patch_shape
# The right strides can be thought by:
# 1) Thinking of `img` as a chunk of memory in C order
# 2) Asking how many items through that chunk of memory are needed when indices
# i,j,k,l are incremented by one
strides = img.itemsize*np.array([Y, 1, Y, 1])
return np.lib.stride_tricks.as_strided(img, shape=shape, strides=strides)
```

`W, H, X, Y = (10, 14, 4, 7)`

,`P.shape`

will be`(11, 4, 4, 7)`

, how do you wan't to offset and what? – alko Dec 17 '13 at 12:24