I am writing a OpenCV C++ code to detect and differentiate between different shapes such as shown below:
http://i50.tinypic.com/2u550t5.png (stackoverflow.com didn't allow me to post the image)
The shapes will vary in size and it will be more distorted (I am speculating there will be around 25-30 different shapes).
I thought of using template matching to detect and differentiate. However, I wanted a more robust method. So I thought of implementing the algorithm "Haar Feature-based Cascade Classifier for Object Detection" in OpenCV. I have read the paper "Robust Real-time object detection" by Viola-Jones.
(The algorithm need not be rotation invariant)
My question is:
1) Can I use this algorithm to correctly differentiate between the given shapes? If Yes, then please refer to some good article / book which explains training and testing the haar-classifier using OpenCV.
2) Also, can this algorithm differentiate between different sizes of similar shape?
3) If a new shape is encountered then the algorithm should learn to identify it in future encounters.
Please suggest any alternate/better algorithm/approach.