I am trying to equalise the histogram of a HSV image using openCV and C++. I know there are libraries with openCV that will do this for me but i want to try it manually to understand the method.

I am assuming that the equalisation will be done on the V channel of the HSV image? I have found a method for greyscale histogram equalisation which involves

- Count Number of pixels of each value
- Find probability of each pixel in image
- Calculate the cumulative distribution function
- Calculate the CDF * Max value in image.
- Round this number to get the pixel value

I have tried this method on paper with a simple 5x5 grid of values and it seemed to give the effect of equalising the values.

I have tried to implement this in C++ but I am not getting the values i expected.

```
int rows = channel.rows;
int cols = channel.cols;
int hist[256];
int total = rows*cols;
for(int i = 0; i<rows; i++)
{
for(int k = 0; k<cols; k++ )
{
int value = channel.at<cv::Vec3b>(i,k)[0];
hist[value] = hist[value] + 1;
}
}
double prob[255];
int newValues[255];
double cuml = 0;
for(int j = 0; j< 255; j++)
{
prob[j] = hist[j]/total; // Probability of each value in image
cuml = cuml + prob[j]; // Cumulative probability of current and all previous values
double cdfmax = cuml * 255; // Cumulative probability * max value
newValues[j] = (int) round(cdfmax);
cout << hist[j] << endl;
cout << prob[j] << endl;
}
```

Channel is a Mat image representing the V values of my HSV image. I am pretty sure the problem lies in the first for loop to sum up all occurrences of that value in the image. I am fairly new to C++ so there may well be other errors as well. Any help appreciated.