# Faster way to loop through every pixel of an image in Python?

I need to loop through each pixel of a 2560x2160 2D numpy array (image). A simplified version of my problem is as follows:

``````import time
import numpy as np

t = time.clock()
limit = 9000
for (x,y), pixel in np.ndenumerate(image):
if( pixel > limit )
pass
tt = time.clock()
print tt-t
``````

This is taking an obnoxious ~30 seconds to complete on my computer. ( Core i7, 8GB ram ) Is there a faster way to perform this loop with an interior 'if' statement? I am only interested in pixels above a certain limit, but I do need their (x,y) indices and value.

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Use a boolean matrix:

``````x, y = (image > limit).nonzero()
vals = image[x, y]
``````
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WOW! My eyes are opened. Took < 0.1 second. –  dinkelk Oct 22 '12 at 1:56

First, try to use vectorize calculation:

``````i, j = np.where(image > limit)
``````

If your problem can't be solve by vectorize calculation, you can speedup the for loop as:

``````for i in xrange(image.shape[0]):
for j in xrange(image.shape[1]):
pixel = image.item(i, j)
if pixel > limit:
pass
``````

or:

``````from itertools import product
h, w = image.shape
for pos in product(range(h), range(w)):
pixel = image.item(pos)
if pixel > limit:
pass
``````

The numpy.ndenumerate is slow, by using normal for loop and get the value from array by `item` method you can speedup the loop by 4x.

If you need more speed, try to use Cython, it will make your code as fast as C code.

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