Pattern Recognition for Industrial Security using the Fuzzy Sugeno Integral and Modular Neural Networks Your Logo Here
نویسندگان
چکیده
We describe in this paper a new approach for pattern recognition using modular neural networks with a fuzzy logic method for response integration. We proposed a new architecture for modular neural networks for achieving pattern recognition in the particular case of human faces and fingerprints. Also, the method for achieving response integration is based on the fuzzy Sugeno integral with some modifications.
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Pattern Recognition for Industrial Security using the Fuzzy Sugeno Integral and Modular Neural Networks
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