I'm trying to implement a program that will take a scanned (possibly rotated) document like an ID card, detect its type based on two or more image templates and normalize it (de-rotated it and resize so it matches the template). Everything will be scanned, so luckily perspective is not a problem.
I have already tried a number of approaches with no success:
I tried using openCV's features2d to detect the template and findHomograpy to normalize it but it fails extremely often. If I take a template, change it a little bit (other data/photo on ID card), rotate ~40 degrees then it usually fails, no matter what configuration of descriptors detectors and matcher I use.
Also tried this http://manpages.ubuntu.com/manpages/gutsy/man1/unpaper.1.html which is an de-rotate tool and then tried to do normal matching but unpaper doesn't work great with rotation angles greater than 20 deg.
If there's a ready solution it would be really great, a commercial library (preferably c/c++ or a command line tool) is also an option. I hate to admit that but I fail miserably when try to understand computer vision papers so liniking unfortunately won't help me.
Thank you very much for help!