I am working on a project that has a small component requiring the comparison of distributions over image gradients. Assume I have computed the image gradients in the x and y directions using a Sobel filter and have for each pixel a 2-vector. Obviously getting the magnitude and direction is reasonably trivial and is as follows:

However, what is not clear to me is how to bin these two components in to a two dimensional histogram for an arbitrary number of bins.

I had considered something along these lines(written in browser):

```
//Assuming normalised magnitudes.
//Histogram dimensions are bins * bins.
int getHistIdx(float mag, float dir, int bins) {
const int magInt = reinterpret_cast<int>(mag);
const int dirInt = reinterpret_cast<int>(dir);
const int magMod = reinterpret_cast<int>(static_cast<float>(1.0));
const int dirMod = reinterpret_cast<int>(static_cast<float>(TWO_PI));
const int idxMag = (magInt % magMod) & bins
const int idxDir = (dirInt % dirMod) & bins;
return idxMag * bins + idxDir;
}
```

However, I suspect that the mod operation will introduce a lot of incorrect overlap, i.e. completely different gradients getting placed in to the same bin.

Any insight in to this problem would be very much appreciated.

I would like to avoid using any off the shelf libraries as I want to keep this project as dependency light as possible. Also I intend to implement this in CUDA.