### Machine learning approach

You choose some features which describe contours, choose some classification method, prepare a training set of tagged contours, train the classifier, use it in the program.

**Contour features.** Given a contour(detected in the image or constructed from the user input), you can calculate rotation-invariant moments. The oldest and the most well known is a set of Hu moments.

You can also consider such features of the contour as eccentricity, area, convexity defects, FFT transform of the centroid distance function and many others.

**Classifiers.** Now you need to train a classifier. Support Vector Machines, Neural Networks, decision trees, Bayes classifiers are some of the popular methods. There are many methods to choose from. If you choose SVM, LIBSVM is a free SVM library, which works also in Java, and it works on Android too.

### Ad-hoc rule approach

You can also approximate contour with a polygonal curve (see Ramer-Douglas-Peucker algorithm, there is a free implementation in OpenCV library, now available on Android). For certain simple forms like triangles or rectangles you can easily invent some ad-hoc heuristic rule which will "recognize" them (for example, if a closed contour can be approximated with just three segments and small error, then it is likely to be a triangle; if the centroid distance function is almost constant and there are zero convexity defects, then it is likely to be a circle).