# How to reduce the number of colors in an image with OpenCV in Python?

I have a set of image files, and I want to reduce the number of colors of them to 64. How can I do this with OpenCV?

I need this so I can work with a 64-sized image histogram. I'm implementing CBIR techniques

What I want is color quantization to a 4-bit palette.

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If you want 64 colors, you want a 6-bit palette. See my answer below to a better explanation and code for using 2 bits from each color channel in order to build a 6-bit palette image. –  Moacir Ponti Jr. Apr 16 '12 at 18:47
@Felipe Added a new answer, you might find it interesting. –  karlphillip Dec 21 '13 at 3:24

There are many ways to do it. The methods suggested by jeff7 are OK, but some drawbacks are:

• method 1 have parameters N and M, that you must choose, and you must also convert it to another colorspace.
• method 2 answered can be very slow, since you should compute a 16.7 Milion bins histogram and sort it by frequency (to obtain the 64 higher frequency values)

I like to use an algorithm based on the Most Significant Bits to use in a RGB color and convert it to a 64 color image. If you're using C/OpenCV, you can use something like the function below.

If you're working with gray-level images I recommed to use the LUT() function of the OpenCV 2.3, since it is faster. There is a tutorial on how to use LUT to reduce the number of colors. See: Tutorial: How to scan images, lookup tables... However I find it more complicated if you're working with RGB images.

``````void reduceTo64Colors(IplImage *img, IplImage *img_quant) {
int i,j;
int height   = img->height;
int width    = img->width;
int step     = img->widthStep;

uchar *data = (uchar *)img->imageData;
int step2 = img_quant->widthStep;
uchar *data2 = (uchar *)img_quant->imageData;

for (i = 0; i < height ; i++)  {
for (j = 0; j < width; j++)  {

// operator XXXXXXXX & 11000000 equivalent to  XXXXXXXX AND 11000000 (=192)
// operator 01000000 >> 2 is a 2-bit shift to the right = 00010000
uchar C1 = (data[i*step+j*3+0] & 192)>>2;
uchar C2 = (data[i*step+j*3+1] & 192)>>4;
uchar C3 = (data[i*step+j*3+2] & 192)>>6;

data2[i*step2+j] = C1 | C2 | C3; // merges the 2 MSB of each channel
}
}
return img_quant;
}
``````
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Could you not still use LUT on non-gray-scale images? If you run the code from the OpenCV tutorial in the link you gave here, you can easily quantize the color space down to 64 colors by giving 64 as an input parameter to their code. That essentially does the same thing as extracting the 2 most significant bits in your example. Or am I missing something? –  t2k32316 May 29 '13 at 4:42
@Moacir This function shouldn't return a value since it's signature states that it returns `void`. –  karlphillip Dec 21 '13 at 2:57

This subject was well covered on OpenCV 2 Computer Vision Application Programming Cookbook:

Chapter 2 shows a few reduction operations, one of them demonstrated here in C++:

``````#include <iostream>
#include <vector>

#include <opencv2/highgui/highgui.hpp>
#include <opencv2/imgproc/imgproc.hpp>

void colorReduce(cv::Mat& image, int div=64)
{
int nl = image.rows;                    // number of lines
int nc = image.cols * image.channels(); // number of elements per line

for (int j = 0; j < nl; j++)
{
// get the address of row j
uchar* data = image.ptr<uchar>(j);

for (int i = 0; i < nc; i++)
{
// process each pixel
data[i] = data[i] / div * div + div / 2;
}
}
}

int main(int argc, char* argv[])
{
// Load input image (colored, 3-channel, BGR)
if (input.empty())
{
std::cout << "!!! Failed imread()" << std::endl;
return -1;
}

colorReduce(input);

cv::imshow("Color Reduction", input);
cv::imwrite("output.jpg", input);
cv::waitKey(0);

return 0;
}
``````

Below you can find the input image (left) and the output of this operation (right):

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There is the K-means clustering algorithm which is already available in the OpenCV library. In short it determines which are the best centroids around which to cluster your data for a user-defined value of k ( = no of clusters). So in your case you could find the centroids around which to cluster your pixel values for a given value of k=64. The details are there if you google around. Here's a short intro to k-means.

Something similar to what you are probably trying was asked here on SO using k-means, hope it helps.

Another approach would be to use the pyramid mean shift filter function in OpenCV. It yields somewhat "flattened" images, i.e. the number of colors are less so it might be able to help you.

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You might consider K-means, yet in this case it will most likely be extremely slow. A better approach might be doing this "manually" on your own. Let's say you have image of type `CV_8UC3`, i.e. an image where each pixel is represented by 3 RGB values from 0 to 255 (`Vec3b`). You might "map" these 256 values to only 4 specific values, which would yield `4 x 4 x 4` = `64` possible colors.

I've had a dataset, where I needed to make sure that dark = black, light = white and reduce the amount of colors of everything between. This is what I did (C++):

``````inline uchar reduceVal(const uchar val)
{
if (val < 64) return 0;
if (val < 128) return 64;
return 255;
}

void processColors(Mat& img)
{
uchar* pixelPtr = img.data;
for (int i = 0; i < img.rows; i++)
{
for (int j = 0; j < img.cols; j++)
{
const int pi = i*img.cols*3 + j*3;
pixelPtr[pi + 0] = reduceVal(pixelPtr[pi + 0]); // B
pixelPtr[pi + 1] = reduceVal(pixelPtr[pi + 1]); // G
pixelPtr[pi + 2] = reduceVal(pixelPtr[pi + 2]); // R
}
}
}
``````

causing `[0,64)` to become `0`, `[64,128)` -> `64` and `[128,255)` -> `255`, yielding `27` colors:

To me this seems to be neat, perfectly clear and faster than anything else mentioned in other answers.

You might also consider reducing these values to one of the multiples of some number, let's say:

``````inline uchar reduceVal(const uchar val)
{
if (val < 192) return uchar(val / 64.0 + 0.5) * 64;
return 255;
}
``````

which would yield a set of 5 possible values: `{0, 64, 128, 192, 255}`, i.e. 125 colors.

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Assuming that you want to use the same 64 colors for all images (ie palette not optimized per image), there are a at least a couple choices I can think of:

1) Convert to Lab or YCrCb colorspace and quantize using N bits for luminance and M bits for each color channel, N should be greater than M.

2) Compute a 3D histogram of color values over all your training images, then choose the 64 colors with the largest bin values. Quantize your images by assigning each pixel the color of the closest bin from the training set.

Method 1 is the most generic and easiest to implement, while method 2 can be better tailored to your specific dataset.

Update: For example, 32 colors is 5 bits so assign 3 bits to the luminance channel and 1 bits to each color channel. To do this quantization, do integer division of the luminance channel by 2^8/2^3 = 32 and each color channel by 2^8/2^1 = 128. Now there are only 8 different luminance values and 2 different color channels each. Recombine these values into a single integer doing bit shifting or math (quantized color value = luminance*4+color1*2+color2);

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"quantize using N bits for luminance and M bits for each color channel, N should be greater than M." - How can I do this part? –  Felipe Hummel May 6 '11 at 14:45