Title of article :
AN ITERATIVE SPATIO-SPECTRAL DISCRIMINANT SCHEME FOR EEG CLASSIFICATION
Author/Authors :
FATTAHI, D. shiraz university - Faculty of Electrical and Computer Engineering - Biomedical Engineering Group, شيراز, ايران , BOOSTANI, R. shiraz university - School of Electrical and Computer Engineering - CSE IT Department, شيراز, ايران
Abstract :
Brain Computer Interface (BCI) systems still suffer from lack of accuracy in real-time applications. This problem emerges from isolated optimization, and in some occasions from mismatching of feature extraction and classification stages. To unify optimization of both stages, this paper presents a novel scheme to integrate them and simultaneously optimize under a unit criterion. The proposed method iteratively estimates both spatio-spectral filters and classifier weights under a non-linear form of Fisher criterion. In order to validate the introduced method, two standard EEG sets, one containing 118 EEG signals and the other 29, were employed to demonstrate its spatial resolution capability. Experimental results on both datasets reveal the superiority of the proposed scheme in terms of enhancing the classification performance simultaneously with speeding up the optimization process, compared to the conventional methods.
Keywords :
BCI , EEG feature extraction , spatio , spectral filtering , EEG classification
Journal title :
Iranian Journal of Science and Technology :Transactions of Electrical Engineering
Journal title :
Iranian Journal of Science and Technology :Transactions of Electrical Engineering