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Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/2266
Title: Handwritten Character Recognition using Wavelet Transform for Feature Extraction
Authors: . Dhangare, A. H
Shelke, .S.V.
Keywords: Character recognition
DWT
multilayer perceptron
Decision tree neural network
Issue Date: 1-Mar-2014
Abstract: Handwritten Character Recognition is one of the important area of pattern recognition. In this paper 13 sets of handwritten characters are collected from different users; features are extracted by using multilevel 2 dimensional wavelet decomposition technique. Wavelet families used are Daubechies and Reverse Biorthogonal. Wavelet decomposition is done up to three levels i.e. level 6,7 & 8.Features obtained are then train in WEKA3.6 machine learning software for different classifiers like Multilayer perceptron, K-Nearest Neighbor, Naive Byes Results obtained for different classifiers are compared with each other. It is observed that multilayer perceptron gives accuracy of 92%for 8th level of decomposition and 98% for 6th level of decomposition. Confusion matrix shows that there is confusion between characters with similar shape like O and 0, S and 5. Keywords: - Character recognition, DWT, multilayer perceptron, Decision tree neural network
URI: http://192.168.3.232:8080/jspui/handle/123456789/2266
ISSN: 2277-7881
Appears in Collections:Electronics OR E & TC

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