# Condensing Python list of frequencies with duplicates (maybe with comprehensions)

I'm using Python to count the frequency of pixel colors in an image. The Python Imaging Library can convert an image to a list of RGB values, and from there I can easily count duplicates, ending up with a dictionary of pixel values (as strings) and frequencies, like so:

``````{
"255-255-255": 450,
"255-254-254": 345,
"249-250-255": 184,
"124-130-200": 3,
} [etc etc]
``````

(Essentially it's a histogram.)

For large images, I'm then quantizing the colors to multiples of N, so then I might have:

``````[
("255-255-255", 450),
("255-255-255", 345),
("250-250-255", 184),
("125-130-200", 3),
] [etc etc]
``````

This leaves a lot of duplicate "keys" (stored as tuples since we have duplicates). I now need to condense, adding the values of all duplicates. So far I have:

``````c = 0
while c < len(vals) - 1:
if vals[c][0] == vals[c+1][0]:
vals[c][1] += vals[c+1][1]
vals.pop(c+1)
else:
c += 1
return vals
``````

It works fine, but there must be a way with list comprehensions? Or some other more efficient manner? I realize PIL may be able to do this, but I'd like to do by hand while learning how images work. Thanks!

-
Store them as `set`s? — maybe I'm not completely understand the problem :) – Peter Varo May 27 '13 at 15:59
It's not just about reducing to unique psuedo-keys -- need the sum of the associated values – Chris Wilson May 27 '13 at 16:02
Oh, I see, thanks! – Peter Varo May 27 '13 at 16:12

Try this:

``````l = [("255-255-255", 450),
("255-255-255", 345),
("250-250-255", 184),
("125-130-200", 3)]

from collections import defaultdict
D = defaultdict(int)

for k,v in l:
D[k] += v

print D # display the dict.

>>>
defaultdict(<type 'int'>, {'125-130-200': 3, '250-250-255': 184, '255-255-255': 795})
``````
-
Bless you. A "print sum([x[1] for x in vals])" verifies same total before and after. – Chris Wilson May 27 '13 at 16:12