As others have mentioned, it's not a true classification problem. Additionally, because you have items that might be rotated, skewed, etc, you should really perform some sort of object detection/feature analysis on the images.
I'd recommend looking into perceptual hashing or Speeded Up Robust Features (SURF) (more the latter, if you are dealing with a tremendous amount of rotation/skew). Namely, I'd break the images down into regions that are non-identifying (you would eliminate areas that have the user's information, or their photo, for example) concentrating on areas that have a high number of matching feature points.
Use areas that are consistent across all instances of a particular class of ID so that your match scores will be higher, then take aggregates of all the sections you compare to perform your classification.