I'm developing a CBIR solution to be integrated in a license plate recognition application. The image matching algorithm is very robust, but as you can imagine the database is huge and the extraction of images for matching from a database is really slow. I've tried to quantize an image in something like a small local feature vector or even a single numerical value, but without sucess. The idea is to index some such value, to allow really fast extraction, while simultaneously reducing greatly the number of matching candidates. I've read a lot of papers on the subject, but most of them address classification and machine learning as a solution. Since I am not seeing how classification can be useful, since all the images are pretty similar to each other (license plate pictures), I would like to discuss ideas with someone who's had a similar problem in the past, or even someone who has some clue on how I can solve this. I've been really trying to engineer my way out of this performance issue for a long time, but without much sucess.
Given the additional information in the comments, I would solve the problem in the following way: