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I have a weird question, it concerns slicing arrays and extract small thumbnail cutouts. I do have a solution, but it's a chunky for loop which runs fairly slowly on big images.

The current solution looks something like this:

import numpy as np

image = np.arange(0,10000,1).reshape(100,100) #create an image

cutouts = np.zeros((100,10,10)) #array to hold the thumbnails
l = 0

for i in range(0,10):
    for j in range(0,10): #step a (10,10) box across the image + save results
        cutouts[l,:,:] = image[(i*10):(i+1)*10, (j*10):(j+1)*10] 
        l = l+1

print(cutouts[0,:,:])

[[   0.    1.    2.    3.    4.    5.    6.    7.    8.    9.]
 [ 100.  101.  102.  103.  104.  105.  106.  107.  108.  109.]
 [ 200.  201.  202.  203.  204.  205.  206.  207.  208.  209.]
 [ 300.  301.  302.  303.  304.  305.  306.  307.  308.  309.]
 [ 400.  401.  402.  403.  404.  405.  406.  407.  408.  409.]
 [ 500.  501.  502.  503.  504.  505.  506.  507.  508.  509.]
 [ 600.  601.  602.  603.  604.  605.  606.  607.  608.  609.]
 [ 700.  701.  702.  703.  704.  705.  706.  707.  708.  709.]
 [ 800.  801.  802.  803.  804.  805.  806.  807.  808.  809.]
 [ 900.  901.  902.  903.  904.  905.  906.  907.  908.  909.]]

So, like I said, this works. But, once I get to very large images (I work in astronomy) with a couple different colour bands, it gets slow and clunky. In my dream world, I'd be able to do somethin like:

import numpy as np

image = np.arange(0,10000,1).reshape(100,100) #create an image

cutouts = image.reshape(100,10,10)

BUT, the doesn't create the right thumbnails, because it will read a whole row into the first (10,10) array, before moving onto the next one:

print(cutouts[0,:,:])

[[ 0  1  2  3  4  5  6  7  8  9]
 [10 11 12 13 14 15 16 17 18 19]
 [20 21 22 23 24 25 26 27 28 29]
 [30 31 32 33 34 35 36 37 38 39]
 [40 41 42 43 44 45 46 47 48 49]
 [50 51 52 53 54 55 56 57 58 59]
 [60 61 62 63 64 65 66 67 68 69]
 [70 71 72 73 74 75 76 77 78 79]
 [80 81 82 83 84 85 86 87 88 89]
 [90 91 92 93 94 95 96 97 98 99]]

So yeah, that's the problem, am I going mad and the for loop is the best way to do it, or is there some clever way I can slice image array so that it produces the thumbnails I need.

Cheers!

  • 1
    Is there a reason why you want to do the thumbnail creation within numpy? I'd recommend preprocessing and resizing your images with PILLOW, this can also lead to more accurate thumbnails and you don't have to load a huge image into RAM each time – Taxel Aug 23 at 16:42
  • Did the posted solution work for you? – Divakar Aug 26 at 18:03
  • Yes, thank you! Sorry, I was away from work for the long weekend. The skimage function looks perfect. – AshleyNova Aug 28 at 9:21
2

Reshape to 4D, permute axes, reshape again -

H,W = 10,10 # height,width of thumbnail imgs
m,n = image.shape      
cutouts = image.reshape(m//H,H,n//W,W).swapaxes(1,2).reshape(-1,H,W)

More info on the intuition behind it.

A more compact version with scikit-image builtin : view_as_blocks -

from skimage.util.shape import view_as_blocks

cutouts = view_as_blocks(image,(H,W)).reshape(-1,H,W)

If you are okay with the intermediate 4D output, it would a view into the input image and hence virtually free on runtime. Let's verify the view-part -

In [51]: np.shares_memory(image, image.reshape(m//H,H,n//W,W))
Out[51]: True

In [52]: np.shares_memory(image, view_as_blocks(image,(H,W)))
Out[52]: True

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