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Lessmann et al., 2014 - Google Patents

Online learning of invariant object recognition in a hierarchical neural network

Lessmann et al., 2014

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Document ID
9595077478769344042
Author
Lessmann M
Würtz R
Publication year
Publication venue
International Conference on Artificial Neural Networks

External Links

Snippet

Abstract We propose the Temporal Correlation Net (TCN) as an object recognition system implementing three basic principles: forming temporal groups of features, learning in a hierarchical structure, and using feedback to predict future input. It is a further development …
Continue reading at www.ini.rub.de (PDF) (other versions)

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