I'm trying to find a fast way to match descriptors from a database. My program works the following way:
1) Populates a database with descriptors of images (using proper feature detection algorithms)
2) Load an image
3) Extracts descriptor for that image and compares it to all descriptors in the DB, so it can find a proper match.
As you can imagine, it's very heavy to compute a comparison of 32 descriptors millions of times. I've used a hashing function, but that only works for two descriptors that are exactly the same, thus only matching two exactly identical images.
What do you suggest I use to speed up this search?
I've decided to start by approaching a Neural Network solution. Here's a pretty good link for anyone who wants to get started on the subject.