Let's say we have a 3d array A.shape = (100, 5, 5), each small matrix (5,5) is an image, now I want to reshape this 3d array into a square grid of images B.shape=(50,50), so that the images are laid out as 10*10 grid.

I could do this with np.stack kind of tools, but I wonder if it's possible to do this using np.einsum?


There are two simple solutions. Yours and its "transpose":


>>> ABCD.shape
(4, 41, 27)
>>> AC_BD = np.einsum('jik', ABCD.reshape(2, 82, 27)).reshape(82, 54)
>>> AB_CD = np.einsum('ikjl', ABCD.reshape(2, 2, 41, 27)).reshape(82, 54)
>>> Image.fromarray(AC_BD).show()
>>> Image.fromarray(AB_CD).show()

enter image description here enter image description here


Oh, I think I've just figured how

A = np.einsum('ijk->jik', A.reshape(10,50,5)).reshape(50,50); 
  • 1
    Simpler: A.reshape(10, 10, 5, 5).swapaxes(1, 2).reshape(50, 50) or np.einsum('ikjl', A.reshape(10, 10, 5, 5)).reshape(50, 50). – Paul Panzer Mar 16 at 2:53
  • @PaulPanzer, the second is more interesting, what do you mean by einsum('ikjl',...)? – avocado Mar 16 at 2:56
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    'ikjl' is shorthand for 'ikjl->ijkl', i.e. the target in alphabetic order. Btw. after your edit this is no longer equivalent to your result. The arrangements of images are transposed. – Paul Panzer Mar 16 at 3:02
  • @PaulPanzer, understood, I'd like to accept your solution, thanks – avocado Mar 16 at 3:04

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