DocumentCode :
1752194
Title :
Comparison of feed-forward neural net algorithms in application to character recognition
Author :
Kamruzzaman, Joarder
Author_Institution :
Fac. of Inf. Technol., Monash Univ., Gippsland Campus, Vic., Australia
Volume :
1
fYear :
2001
fDate :
2001
Firstpage :
165
Abstract :
In a neural network based character recognition system it is important to choose a training algorithm with high generalization ability. In this paper, we apply three different multilayer feedforward training algorithms namely, backpropagation, double backpropagation and weight smoothing algorithm in a neural network based invariant character recognition model. The model consists of a preprocessor and a classifier. The preprocessor extracts geometrical features of the input character and passes the feature values through a rapid transform block which performs a cyclic shift invariant transform on its input. The classifier is a neural network classifier. Simulation results with 26 English capital letters show that the recognition system achieves best performance with significantly high recognition rate when trained with weight smoothing learning algorithm
Keywords :
backpropagation; character recognition; feature extraction; feedforward neural nets; pattern classification; English capital letters; character recognition; cyclic shift invariant transform; double backpropagation algorithm; feedforward neural net algorithms; geometrical features; multilayer feedforward training algorithms; neural network classifier; preprocessor; rapid transform block; simulation results; weight smoothing algorithm; Backpropagation algorithms; Character recognition; Data preprocessing; Feature extraction; Gravity; Multi-layer neural network; Neural networks; Pattern recognition; Smoothing methods; System testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
TENCON 2001. Proceedings of IEEE Region 10 International Conference on Electrical and Electronic Technology
Print_ISBN :
0-7803-7101-1
Type :
conf
DOI :
10.1109/TENCON.2001.949573
Filename :
949573
Link To Document :
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