I need to detect letters from a picture taken by camera. I know, there exists tools for doing OCR, however, they cannot process pictures that are even little bit damaged. I tried to use tesseract, but the result is far from being sufficient, even when I crop the image to a single letters.
I also tried SURF descriptors (implemented in OpenCV) but currently it is even worse. Moreover, there are several OCR tutorials on SOF, but they are based just on simple pixel-to-pixel matching (even if this is not said explicitly)
In OpenCV library I founded letter-recognition.data describing features (used by Holland-Style Adaptive Classifiers) of alphabetical character, however, I did not find neither example using this data, nor there is any function for generating such feature vectors from graphical input (why is the file in the library anyway?)
Is it worth spending time building functions for computing above mentioned features? Is the result of such OCR good?
Do you know about some features, that are easy to extract and sufficient for recognizing letters? Is it possible to use SURF descriptors, Haarcascades or similar techniques for such goal (OCR of slightly damaged letters) succesfully?
What are your experiences with applying neural networks to the problem? I know, that neural networks are commonly used for OCR, but how robust are they?
Here is the example of the picture I need to recognize: