Recognition of Spatiotemporal Patterns Using a Nonmonotone Neural Network with Hidden Neurons

نویسندگان

  • Satoshi Murakami
  • Masahiko Morita
  • Naoto Sakamoto
چکیده

It has been shown that a nonmonotone neural network model can recognize spatiotemporal patterns without expanding them into spatial patterns. We improve the recognition ability of this model by introducing hidden neurons. We also show a simple method of training the hidden neurons. Computer simulation shows that this model can recognize complicated spatiotemporal patterns.

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تاریخ انتشار 1998