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Bioinspired memory model for HTM face recognition
Conference proceeding

Bioinspired memory model for HTM face recognition

Olga Krestinskaya and Alex Pappachen James
2016 International Conference on Advances in Computing, Communications and Informatics (ICACCI), pp.1528-1532
09/2016

Abstract

Algorithm design and analysis Data processing Face recognition Image processing Memory architecture Training Visualization
Inspired from the working principle of human memory, we propose a new algorithm for storing HTM features detected from images. The resulting features from the training set require lower memory than existing HTM training set. The proposed features are tested in a face recognition problem using the benchmark AR dataset. the simulation results show that the proposed algorithm gives higher face recognition accuracy, in comparison to the conventional methods.

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