Character Recognition using RCS with Neural Network
Hand written Tamil Character recognition refers to the process of conversion of handwritten Tamil character into
Unicode Tamil character. The scanned image is segmented into paragraphs using spatial space detection technique, paragraphs
into lines using vertical histogram, lines into words using horizontal histogram, and words into character image glyphs using
horizontal histogram. The extracted features considered for recognition are given to Support Vector Machine, Self Organizing
Map, RCS, Fuzzy Neural Network and Radial Basis Network. Where the characters are classified using supervised learning
algorithm. These classes are mapped onto Unicode for recognition. Then the text is reconstructed using Unicode fonts. This
character recognition finds applications in document analysis where the handwritten document can be converted to editable
printed document. This approach can be extended to recognition and reproduction of hand written documents in South Indian
languages. In the training set, a recognition rate of 100% was achieved and in the test set the recognized speed for each
character is 0.1sec and accuracy is 97%. Understandably, the training set produced much higher recognition rate than the test
set. Structure analysis suggested that the proposed system of RCS with back propagation network is given higher recognition
rate.
Keywords: SVM, SOM, FNN, RBF, RCS, BPN
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