# Python: Iterate over a sub-2d (nested) array to calculate its sum

I want to realize this function: calculate the average value(or the sum) `rgb` value of an image. More specifically, the image consists of an 2-d array of a tuple. Here is my code:

``````rgb = [0.0, 0.0, 0.0]
for r in range(0, 3):
for ii in range(x, x + X_STEP):
for jj in range(y, y + Y_STEP):
rgb[r] += src_pix[ii][jj][r]
rgb = map(lambda a: a / X_STEP / Y_STEP, rgb) #this line does not matter, it is just the difference between sum and average
``````

Question How to prettify it, or make it more pythonic? Maybe a nested `map` is still not the best. I hope it is like using `itertools`.

This link provides a solution close to my question. Another link is a possible duplicate of my code but he is not asking the same question.

Thanks a lot.

EDIT I actually hope to calculate the sum of a sub 2-d array.

-
Do you want the average value or the sum? They're not the same. –  Makoto Aug 31 '12 at 14:21
I think they're the same except for the last line of my code which is a divide operation –  ComboZhc Aug 31 '12 at 14:23

It looks like you are using PIL. If so I'd use numpy for this.

Assuming you are using PIL version >= 1.1.6 , you can convert between the PIL object `src_pix` to numpy array like so:

``````np_pix = numpy.array(srx_pix)
``````

Then just use `numpy.sum` :

``````rgb = numpy.sum(np_pix)
``````

Or calculate the average (as your code above does):

``````rgb = numpy.mean(np_pix)
``````

For older versions of PIL use `numpy.asarray`.

If you want to compute the sum of a subarray, you can get that subarray using a slice like so:

``````rgb_slice = numpy.mean(np_pix[X_start:X_end,Y_start:Y_end])
``````

References:

-
Does it provide such functionality to calculate the sum of a sub 2-d array? –  ComboZhc Aug 31 '12 at 14:48
Yeah - just do np_pix[X_start:X_end,Y_start:Y_end] to get the subarray you want. –  Matt W-D Aug 31 '12 at 14:57