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To generate test data for my fitting algorithm I need to create an array of Gaussian noise, with its sigma specified element-wise. A pure-python implementation is as follows:

from numpy.random import normal
for i in range(100):
    for j in range(100):
        for k in range(100):
            image[i, j, k] += normal(0, sigmas[i, j, k])

This is meant to simulate a noisy image, where each pixel is a measurement value, with variance specified; for a reasonable test I need to generate noise coherent with variance (that I have given).

This implementation is too slow (I am working with big 3d arrays) so what I am looking for is a way to speed it up (most likely with vectorized lib methods).

1 Answer 1

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The arguments to numpy.random.normal can be arrays. Pass your array sigmas as the second argument, e.g.

noise = normal(0, sigmas)
image += noise
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  • Thanks a lot, it's strange it's not stated explicitly in the docs (they usually say array-like)
    – Jatentaki
    Dec 12, 2016 at 17:54
  • 2
    Or, indeed, noisy_image = normal(image, sigmas) Dec 12, 2016 at 19:14
  • @RobertKern Ooh, I like that. Dec 12, 2016 at 20:43

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