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Designing discriminative spatial filter vectors in motor imagery brain–computer interface
Authors:Kyeong‐Yeon Lee  Sun Kim
Affiliation:1. College of Liberal Studies, Seoul National University, , Seoul, Korea;2. School of Biological Sciences, Seoul National University, , Korea;3. Student-Designed Major in Brain Engineering, Seoul National University, , Korea;4. Department of Computer Science and Engineering, Bioinformatics Institute, Seoul National University, , Seoul, Korea
Abstract:The problem of a volume conduction effect in electroencephalography is considered one of the challenging issues in brain–computer interface (BCI) community. In this article, we propose a novel method of designing a class‐discriminative spatial filter assuming that a combination of spatial pattern vectors, irrespective of the eigenvalues of the common spatial pattern (CSP), can produce better performance in terms of classification accuracy. We select discriminative spatial filter vectors that determine features in a pairwise manner, that is, eigenvectors of the K largest eigenvalue and the K smallest eigenvalue. Although the pair of the eigenvectors of the K largest and the K smallest eigenvalues helps extract discriminative features, we believe that a different set of eigenvector pairs is more appropriate to extract class‐discriminative features. In our experimental results using the publicly available dataset of BCI Competition IV, we show that the proposed method outperformed the conventional CSP methods and a filter‐bank CSP. © 2013 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 23, 147–151, 2013
Keywords:brain–  computer interface  common spatial pattern  feature selection  motor imagery classification  electroencephalography
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