I'm trying to think of a fast algorithm for the following issue.
Given a goal image G, and two images A and B, determine which of A or B is more similar to G. Note that images A, B, and G are all the same dimension.
By more similar, I mean it looks more like image G overall.
Any ideas for algorithms? I am doing this in Objective-C, and have the capability to scan each and every single pixel in images A, B, and G.
I implemented the following: scan each and every pixel, determine the absolute error in each of red, green, and blue values for A to G and for B to G. The one with the less error is more similar. It works okay, but it is extremely extremely slow.