I've read a number of questions on finding the colour palette of an image, but my problem is slightly different. I'm looking for images made up of pure colours: pictures of the open sky, colourful photo backgrounds, red brick walls etc.

So far I've used the App Engine Image.histogram() function to produce a histogram, filter out values below a certain occurrence threshold, and average the remaining ones down. That still seems to leave in a lot of extraneous photographs where there are blobs of pure colour in a mixed bag of other photos.

Any ideas much appreciated!

  • You need to better define what does a picture of pure colours mean? Is it a picture where pixels are of high saturation (in HSV/HSL colour space)? Are these pictures which have large areas of nearly uniform colour? – Unreason Jun 28 '10 at 9:36
  • Can you link to couple of examples showing what you would like to find and couple of examples showing what you wouldn't like to find? – Unreason Jun 28 '10 at 9:57
  • Certainly. Here are a few: flickr.com/photos/21644167@N04/4354544296 flickr.com/photos/11247304@N06/1340979055 flickr.com/photos/denmar/4576689626 The colour doesn't have to be exactly that uniform but the goal is to filter out images that are composed of largely the same hue. – dmkc Jun 28 '10 at 15:52

How about doing this?

  1. Blur the image using some fast blurring algorithm. (Search for stack blur or box blur)
  2. Compute standard deviation of the pixels in RGB domain, once for each color.
  3. Discard the image if the standard deviation is beyond a certain threshold.
  • 1
    You can even try without blurring, just a standard deviation. – Abix Jun 24 '10 at 2:30
  • I'm working on fairly small thumbnails of images, so I think I could forego blurring indeed. Thanks for the suggestion! – dmkc Jun 24 '10 at 2:40
  • This could work if you are looking for uniform colors, one case where this would fall would be looking at a brick wall half of which is red and half of which is yellow bricks. I believe OP is looking for high saturation. – Unreason Jun 28 '10 at 9:56

In my opinion a histogram will not be the ideal tool for the this task since it typically looks at separately at each color channel and you will loose information like this. So for example if you get peaks at 255 red, green and blue this can either mean that there is lots of red (0xFF0000), green (0x00FF00) and blue ( 0x0000FF) in the image or that the whole image is simply entirely white ( 0xFFFFFF).

I recommend you to use a color quantization algorithm on your image: http://en.wikipedia.org/wiki/Color_quantization and have it return you the 16 most dominant colors. Then maybe convert them to HSL and check for values with a high saturation.

  • I think high saturation is what is sought here (wall with red bricks). And I think that saturation histogram would work very well here without any quantization. – Unreason Jun 28 '10 at 9:37
  • Yes, you are right - if it is about saturation only and you do not care about particular hues a saturation histogram will work just fine (and be faster to calculate than a quantization) – Quasimondo Jun 28 '10 at 19:36

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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