I'm developing some image processing software in C++ on Intel which has to run a bicubic interpolation algorithm on small (about 1kpx) images over and over again. This takes a lot of time, and I'm aiming to speed it up. What I have now is a basic implementation based on the literature, a somewhat-improved (with regard to speed) version which doesn't do matrix multiplication, but rather uses pre-calculated formulas for parts of the interpolating polynomial and last, a fixed-point version of the matrix-multiplying code (works slower actually). I also have an external library with an optimized implementation, but it's still too slow for my needs. What I was considering next is:
- vectorization using MMX/SSE stream processing, on both the floating and fixed-point versions
- doing the interpolation in the Fourier domain using convolution
- shifting the work onto a GPU using OpenCL or similar
Which of these approaches could yield greatest performance gains? Could you suggest another? Thanks.