A Novel Tensorial Scheme for EEG-Based Person Identification
Article 2022 en
Authors
WL
Wei Li
YY
Yangzhe Yi
MW
Mingming Wang
Abstract
1 min read
Biometrics have attracted growing research interests as the information security and safety gain increasing attention to date. As a kind of important biomedical signal, Electroen-cephalogram (EEG) contains valuable information about identity, emotionality, personality, etc. Thus, automatically distinguishing the identities based on EEG is beneficial to the development of biometrics, forensics and informatics. Although deep learning has absorbed much research attention for the issue of EEG-based person identification, the performance enhancement of this methodology seems to have hit a bottleneck recently. Hence, by rethinking the problems haunting this issue, we plan to reinvigorate the conventional method pipeline, and put forward a novel and effective tensorial scheme away from the deep learning mainstream. Specifically, the proposed tensorial scheme extracts the effective tensorial representation from multi-channel EEG at first; then, the scheme performs the designed tensorial learning to improve the discriminability of the feature space; finally, the scheme carries out the devised tensorial measurement in the learned metric space for classification. Experimental results have demonstrated the superiority of proposed scheme over the related advanced approaches by means of the challenging benchmark databases DEAP, SEED and DREAMER.
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