I'm quite new to programming (in Python) and so I don't understand what is going on here. I have an image (35x64) as a 3D-array and with np.mean(), I attempted to extract the mean of one color channel of one row:


For comparison, I also wrote a for-loop to append the exact same values in a list and calculating the mean with that:

for i in range(64):

Now, for a strange reason, it gives different values:

First output: 117.1
Second output: 65.7

By looking at the list, I discovered that the second one is correct. Can somebody with more experience explain to me why this is exactly happening and how to fix that? I don't want to use the second, longer code chunk in my programs but am searching for a 1-line solution that gives a correct value.

  • 2
    Can you make sure your img.shape is (35, 64, _) Dec 27, 2019 at 15:28
  • 1
    @sshashank124 It is.
    – Totemi1324
    Dec 27, 2019 at 16:01
  • Yes I saw the answer below. Glad it was resolved Dec 27, 2019 at 16:02

1 Answer 1


There's a subtle difference between img[30][:][0] and img[30,:,0] (the one you were expecting). Let's see with an example:

img = np.arange(35*64*3).reshape(35,64,3)
# array([5760, 5761, 5762])
# array([5760, 5763, ... 5946, 5949])

So you simply need to:


(which is more efficient anyways).

Some details: in your original syntax, the [:] is actually just triggering a copy of the array:

xx = img[30]
yy = img[30][:]
print (xx is yy, xx.shape, yy.shape, np.all(xx==yy))
# False (64, 3) (64, 3) True # i.e. both array are equal 

So when you take img[30][:][0], you're actually getting the 3 colors of the first pixel of row 30.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.