Recognition of Online Handwritten Devanagari Numerals using Support Vector Machine
Loading...
Files
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Handwriting has continued to persist as a mean of communication and recording
information in day-to-day life even with the invention of new technologies. Natural
handwriting is one of the easiest ways of information exchange between a human and a
computer. Handwriting recognition has attracted many researchers across the world since
many years. Recognition of online handwritten Devanagari numerals is a goal of many
research efforts in the pattern recognition field.
The main goal of the work presented in this dissertation is the recognition of online
handwritten Devanagari numerals using support vector machine. In the data collection
phase, co-ordinate points of the input handwritten numeral are collected as the numeral is
written; various algorithms for pre-processing are applied for normalizing, resampling
and interpolating missing points, smoothing and slant correction. Two low-level features
i.e. direction angle and curvature are extracted from the pre processed data. These
features along with the x and y coordinates of the input handwritten character are stored
in a .csv file and fed directly to the recognition phase. Recognition is done using four
kernel functions of SVM by partitioning the data into different schemes. The recognition
accuracies are obtained on different schemes of data using the four kernel functions of
SVM for each scheme.
