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 )
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.


Use a boolean matrix:

x, y = (image > limit).nonzero()
vals = image[x, y]
  • 1
    WOW! My eyes are opened. Took < 0.1 second. – dinkelk Oct 22 '12 at 1:56
  • what is in x and y here? – Andrew Hundt Sep 19 '15 at 19:05
  • 1
    @AndrewHundt: x and y are arrays of x- and y-indices for the nonzero points, respectively. – nneonneo Sep 19 '15 at 22:43
  • 2
    could you elaborate on how exactly this works? – Oliver Oct 19 '15 at 10:07
  • When I run this code with python 2.7, I get an Attribute error saying " 'bool' object has no attribute 'nonzero' ". What is the portion (image > limit) supposed to do? – Marjoram Jun 18 '16 at 6:17

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:


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

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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