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  4. Robust common spatial filters with a maxmin approach
 
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2009
Conference Paper
Title

Robust common spatial filters with a maxmin approach

Abstract
Electroencephalographic signals are known to be non-stationary and easily affected by artifacts, therefore their analysis requires methods that can deal with noise. In this work we present two ways of calculating robust common spatial patterns under a maxmin approach. The worst-case objective function is optimized within prefixed sets of the covariance matrices that are defined either very simply as identity matrices or in a data driven way using PCA. We test common spatial filters derived with these two approaches with real world brain-computer interface (BCI) data sets in which we expect substantial "day-to-day" fluctuations (session transfer problem). We compare our results with the classical common spatial filters and show that both can improve the performance of the latter.
Author(s)
Kawanabe, M.
Vidaurre, C.
Scholler, S.
Müller, K.R.
Mainwork
31st Annual International Conference of the IEEE Engineering in Medicine and Biology, EMBC 2009. Proceedings. CD-ROM  
Conference
Engineering in Medicine and Biology Society (Annual International Conference) 2009  
Language
English
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