# Average over pixels in python-numpy matrix

Let's say I have a 5x5 matrix:

``````arr = np.arange(25).reshape((5,5))

array([[ 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]])
``````

and I want to make a 3x3 matrix out of it by averaging over it.

this should be done in such a way, that the blue pixel should be made out of the included black pixels, the number weighted with the area within the blue pixel.

That means that of the vlaue of the second black pixel (value 1) 3/5(?) should be added to the first blue pixel, 2/5 to the second blue pixel

thanks

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Please explain it with an example! –  iampat Nov 7 '13 at 17:13
Ah that's better! And a very cool question once properly formulated. –  Jaime Nov 7 '13 at 19:22

It doesn't seem to me like you know what you really want. But what you describe for the top left cornber can be expanded to the whole array with `scipy.signal.correlate`, although it produces a 4x4 output, and you have the math wrong:

``````>>> import scipy.signal
>>> scipy.signal.correlate(np.arange(25).reshape(5, 5),
...                        [[1, 3/5], [3/5, 9/25]], 'valid') / 4
array([[  1.44,   2.08,   2.72,   3.36],
[  4.64,   5.28,   5.92,   6.56],
[  7.84,   8.48,   9.12,   9.76],
[ 11.04,  11.68,  12.32,  12.96]])
``````
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no that's not what I was looking for, If I want to produce a 4x4 matrix, it's no longer 3/5 of the next pixel but less... I want to take the amount of "area" of the next pixel into account, that is covered by the new bigger pixel –  wa4557 Nov 7 '13 at 17:38
and yes I got the maths wrong –  wa4557 Nov 7 '13 at 17:39
Well, if you can't even describe what you want precisely, then it's going to be kind of hard to help you code it. You may want to try to describe what you want that smaller matrix for. –  Jaime Nov 7 '13 at 17:43
I see, I edited my anser. Now it's clear –  wa4557 Nov 7 '13 at 18:43

It seems that you want to resample your image so that it's a different size. If so, then you could use `scipy.ndimage.zoom`:

``````import numpy as np
import scipy.ndimage

arr = np.arange(25).reshape((5,5))

resized_arr = scipy.ndimage.zoom(arr, 3. / 5)

print resized_arr.shape
print resized_arr
``````

outputs:

``````(3, 3)

[[ 0  2  4]
[10 12 14]
[20 22 24]]
``````

The idea is that you fit a function to the 2d surface defined by the pixels in your image -- in the case of `zoom`, the function is a parametric spline fit. Then once you have a function fit to your surface, you can obtain samples at whatever grid points you wish.

You can also use more complex functions to fit the original image. Check out `scikits.samplerate` for a nice wrapper over the "source rabbit code," a full-featured resampling library.

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yeah looks, promising, but not exactly what I want, since this whole thing does not average at all, just takes every third value. I'm afraid that's not what I want –  wa4557 Nov 7 '13 at 21:38
Hm, I see what you mean, but I think this is actually doing what you want at points that aren't on the edges of the image. If you always have to reduce a 5x5 image to a 3x3 image, then you might want to just hand-compute the averaging transform. Otherwise, if you're doing this on larger images, you should keep `zoom` in mind. –  lmjohns3 Nov 7 '13 at 22:36