# How to reduce colors to a specified palette

I need to solve the following problem:

INPUT: Image IM, Palette PA

OUTPUT: IM only with the colours of PA

The input image is in RGB but I can convert it to HSV. The colour target palette I specify contains at the moment: black, white, light gray, gray, dark gray, blue, pink, red, purple, green, yellow, brown, orange.

I searched a lot for that, but I can only find reducing an image to the most common colours or reducing it to a fixed palette like 16 colours EGA graphics.

I found the best answer of this: How do I convert any image to a 4-color paletted image using the Python Imaging Library?

It has an input palette and reduces the image to that. Is there an equal way to do in in OpenCV with C++ ?

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difficult to tell what you're trying to do. are you trying to write a color quantizer? or do you just want to force an rgb image to a fixed palette? if the later, then all you have to do is set each pixel to the closest color (via L2) from the palette. if the former, then you can use a clustering algorithm (e.g. k means). – thang Jan 31 '13 at 3:41
What @thang commented works just fine, but watch out for the color space you are doing this. See stackoverflow.com/a/14237976/1832154 as an example of differences between distinct color spaces for replacing colors by the closest one. – mmgp Jan 31 '13 at 3:45
thanks for your quick replies. indeed I "want to force an rgb image to a fixed palette". And yes one of my major problems is to find a good distance measurement between two colours. stackoverflow.com/questions/14236721/… is interesting. However I thought the would be a ready-to-use implementation, like the python library I quoted above. – Kenyakorn Ketsombut Jan 31 '13 at 5:18
What have you tried? Mapping an image to a given fixed palette is not hard, unless you want to go into dithering. See e.g. en.wikipedia.org/wiki/Floyd%E2%80%93Steinberg_dithering for details. – Anony-Mousse Jan 31 '13 at 10:13
"Mapping an image to a given fixed palette" is exactly what I want to do. To tell me, that it is not hard, is not very constructive. – Kenyakorn Ketsombut Jan 31 '13 at 12:34

Since your palette is fixed, you'll want to use a dithering approach such as Floyd Steinberg dithering along with an appropriate color similarity measure, for example in Lab color space.

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That's a nice algorithm – Lucas Feb 2 '13 at 1:03

Suppose that rgb color space is 3D cube

And `Palette PA` is several points in this cube. So our problem is reduced to finding the nearest `Palette PA` point for any given `rgb` point in 3D space.

I think the better solution is k-d tree

At the end of wiki page you can find several links for c++ implementations

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