Kernel feature detector: extracting kernel features by minimizing α-information
説明
In the present paper, we propose kernel feature detectors for extracting salient features of input patterns. Kernel feature detectors are generated by the information controllers. The information controllers are mainly used to minimize the /spl alpha/-information, difference between Shannon entropy and Renyi entropy, and to generate explicit kernel feature detectors. By minimizing the /spl alpha/-information, a few important features called kernel features are separated from many other unimportant units. We applied our method to two problems: F-H problem and twenty-six alphabet character recognition. In all these cases, we succeeded in extracting kernel features of input patterns, corresponding to our intuition about the input patterns.
収録刊行物
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- Proceedings of International Conference on Neural Networks (ICNN'96)
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Proceedings of International Conference on Neural Networks (ICNN'96) 4 2182-2187, 2002-12-24
IEEE