Subject-specific time-frequency selection for multi-class motor imagery-based BCIs using few Laplacian EEG channels

Journal Article (2017)
Author(s)

Yuan Yang (Université Paris-Saclay, TU Delft - Mechanical Engineering, Whist Lab)

Sylvain Chevallier (Université de Versailles St-Quentin)

Joe Wiart (Université Paris-Saclay, Whist Lab)

Isabelle Bloch (Whist Lab, Université Paris-Saclay)

Research Group
Biomechatronics & Human-Machine Control
DOI related publication
https://doi.org/10.1016/j.bspc.2017.06.016 Final published version
More Info
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Publication Year
2017
Language
English
Research Group
Biomechatronics & Human-Machine Control
Volume number
38
Pages (from-to)
302-311
Downloads counter
225

Abstract

The essential task of a motor imagery brain–computer interface (BCI) is to extract the motor imagery-related features from electroencephalogram (EEG) signals for classifying motor intentions. However, the optimal frequency band and time segment for extracting such features differ from subject to subject. In this work, we aim to improve the multi-class classification and to reduce the required EEG channel in motor imagery-based BCI by subject-specific time-frequency selection. Our method is based on a criterion namely Fisher discriminant analysis-type F-score to simultaneously select the optimal frequency band and time segment for multi-class classification. The proposed method uses only few Laplacian EEG channels (C3, Cz and C4) located around the sensorimotor area for classification. Applied to a standard multi-class BCI dataset (BCI competition III dataset IIIa), our method leads to better classification performance and smaller standard deviation across subjects compared to the state-of-art methods. Moreover, adding artifacts contaminated trials to the training dataset does not necessarily deteriorate our classification results, indicating that our method is tolerant to artifacts.