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Common Spatial Pattern Ensemble Classifier and Its Application in Brain-Computer Interface 被引量:5

Common Spatial Pattern Ensemble Classifier and Its Application in Brain-Computer Interface
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摘要 Abstract-Common spatial pattern (CSP) algorithm is a successful tool in feature estimate of brain-computer interface (BCI). However, CSP is sensitive to outlier and may result in poor outcomes since it is based on pooling the covariance matrices of trials. In this paper, we propose a simple yet effective approach, named common spatial pattern ensemble (CSPE) classifier, to improve CSP performance. Through division of recording channels, multiple CSP filters are constructed. By projection, log-operation, and subtraction on the original signal, an ensemble classifier, majority voting, is achieved and outlier contaminations are alleviated. Experiment results demonstrate that the proposed CSPE classifier is robust to various artifacts and can achieve an average accuracy of 83.02%. Abstract-Common spatial pattern (CSP) algorithm is a successful tool in feature estimate of brain-computer interface (BCI). However, CSP is sensitive to outlier and may result in poor outcomes since it is based on pooling the covariance matrices of trials. In this paper, we propose a simple yet effective approach, named common spatial pattern ensemble (CSPE) classifier, to improve CSP performance. Through division of recording channels, multiple CSP filters are constructed. By projection, log-operation, and subtraction on the original signal, an ensemble classifier, majority voting, is achieved and outlier contaminations are alleviated. Experiment results demonstrate that the proposed CSPE classifier is robust to various artifacts and can achieve an average accuracy of 83.02%.
出处 《Journal of Electronic Science and Technology of China》 2009年第1期17-21,共5页 中国电子科技(英文版)
基金 supported by the National Natural Science Foundation of China under Grant No. 30525030, 60701015, and 60736029.
关键词 Brain-computer interface channel selection classifier ensemble common spatial pattern. Brain-computer interface,channel selection,classifier ensemble,common spatial pattern.
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参考文献14

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同被引文献27

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