You can try to use a feature extraction algorithm like SIFT, SURF etc. Then compare extracted features with your database. You can select the best matching image based on the number of correct matches.
Generally SIFT works fine for 2D objects, like picture of a label or an advertisement board. Rotation on 2D plane or scale wont matter if you are using SIFT. SURF is supposed to be an improvement of SIFT but I do not have much experience on it.
These algorithms are said to be bit heavy. Anyway if you are matching just 5 images it wont be much of a problem.(Or you can simply calculate the descriptors(features) of your images before hand and store them. Then at run time all you have to do is get the descriptor of the user image and compare it) But still if you are trying to match images of basic shapes like squares and circles, using square detection or circle detection might be efficient performance wise.