ELLIPTIC BASIS FUNCTION PROBABILISTIC NEURAL NETEORK FOR CHARACTER RECOGNITION
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TP18

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    Abstract:

    An Elliptic Basis Function Probabilistic Neural Network (EBPNN)model for character recognition with noise was proposed, which uses selective attentional parameters extracted from statistic features of characters as elliptic basis function parameters. EBPNN is not only used for binary pattern recognition, but also for continuous pattern recognition. The experiments show that the recognition rate of EBPNN is better than that of other neural networks, especially under the noise circumstances.

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ZHANG Jun QI Fei Hu YE Xiang Yun. ELLIPTIC BASIS FUNCTION PROBABILISTIC NEURAL NETEORK FOR CHARACTER RECOGNITION[J]. Journal of Infrared and Millimeter Waves,1998,17(2):91~97

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  • Received:
  • Revised:September 12,1997
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