I am implementing the Good Features To Track/Shi-Tomasi corner detection algorithm on CUDA and need to find a way to parallelize the following part of the algorithm:

- I start with an array of points obtained from an image sorted according to a certain intensity value (an eigenvalue of a previous calculation).
- Starting with the first point of the array, I remove any point in the array that is within a certain physical distance of the first point. (This distance is calculated on the image plane, not on the array).
- On the resulting array, we repeat step two for the remaining points.

Is this somehow parallelizable, specifically on CUDA? I'm suspecting not, since there will obviously be dependencies across the image.