Feature Extraction and Classification for Online Handwritten Gurmukhi Character Recognition
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EIED, Thapar University
Abstract
Online handwriting character recognition is gaining attraction from the researchers across the
world because with the advent of touch based devices, a more natural way of communication is
being explored. Online system is real time processing in which characters are recognized as they
are written. There are various issues associated with online recognition process. Due to
variations in handwriting, it is very difficult to achieve high degree of accuracy. Therefore, the
research work presented in the thesis aims to develop an efficient system to recognize the input
natural handwriting. Script for which recognition is done is Gurmukhi script.
Stroke based approach is followed for online recognition of handwritten Gurmukhi characters
because of the uniqueness of the strokes in comparison to characters. In the present work, 32
stroke classes have been considered and implemented for online character recognition of
Gurmukhi script. Three types of features are extracted, namely Spatiotemporal features,
Tangential features and Spectral features. In the thesis work, a hybrid method consisting of
multiple features has been proposed to improve the performance of the recognizer. Two types of
hybridization have been obtained. First, by combining Spatiotemporal and Tangential features
and second, by combining Spatiotemporal and Spectral features.
Three different types of classifiers which are K-Nearest Neighbor (KNN), Multilayer Perceptron
(MLP), and Support Vector Machines (SVM) have been used for recognition. Recognition is
implemented using two methods, namely cross validation technique and percentage split method.
Highest accuracy is achieved using MLP and SVM using the hybrid features. KNN also
observed good accuracy rate.
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Masters Thesis
