Choice of Classifiers in Hierarchical Recognition of Online Handwritten Kannada and Tamil Aksharas
Venkatesh Narasimha Murthy (Tata Consultancy Services Limited, India)
Angarai Ganesan Ramakrishnan (Indian Institute of Science, India)
Abstract: In this paper, we propose a novel dexterous technique for fast and accurate recognition of online handwritten Kannada and Tamil characters. Based on the primary classifier output and prior knowledge, the best classifier is chosen from set of three classifiers for second stage classification. Prior knowledge is obtained through analysis of the confusion matrix of primary classifier which helped in identifying the multiple sets of confused characters. Further, studies were carried out to check the performance of secondary classifiers in disambiguating among the confusion sets. Using this technique we have achieved an average accuracy of 92.6% for Kannada characters on the MILE lab dataset and 90.2% for Tamil characters on the HP Labs dataset.
Keywords: DTW, Hierarchical Classification, Kannada, PCA, Tamil, handwritten character recognition