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From a large collection of jpeg images, I want to identify those more likely to be simple logos or text (as opposed to camera pictures). One identifying characteristic would be low color count. I expect most to have been created with a drawing program.

If a jpeg image has a palette, it's simple to get a color count. But I expect most files to be 24-bit color images. There's no restriction on image size.

I suppose I could create an array of 2^24 (16M) integers, iterate through every pixel and inc the count for that 24-bit color. Yuck. Then I would count the non-zero entries. But if the jpeg compression messes with the original colors I could end up counting a lot of unique pixels, which might be hard to distinguish from a photo. (Maybe I could convert each pixel to YUV colorspace, and save fewer counts.)

Any better ideas? Library suggestions? Humorous condescensions?

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Sample 10000 random coordinates and make a histogram, then analyze the histogram.

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I like the idea of taking a random sample. But "analyze the histogram" sounds like one of those things easier said than done. It's easy to spot these logos by eye, but algorithmically may be a lot harder. – Guy Gordon Apr 18 '12 at 18:41

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