4.5 Article

Optimal channel-based sparse time-frequency blocks common spatial pattern feature extraction method for motor imagery classification

Journal

MATHEMATICAL BIOSCIENCES AND ENGINEERING
Volume 18, Issue 4, Pages 4247-4263

Publisher

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/mbe.2021213

Keywords

brain-computer interface; electroencephalogram; motor imagery; common spatial pattern

Funding

  1. National Natural Science Foundation of China [61671197, 61871427, 61971168]
  2. Zhejiang Provincial Natural Science Foundation of China [LY18F030009]
  3. Foundation of Zhejiang Provincial Education Department of China [Y202044279]

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A new optimal channel-based sparse time-frequency blocks common spatial pattern (OCSB-CSP) feature extraction method is proposed to improve the classification accuracy and computational efficiency of the model. Comparative experiments on two public EEG datasets show that the proposed method outperforms other winner methods in terms of classification performance. This provides a new idea for enhancing BCI applications.
Common spatial pattern (CSP) as a spatial filtering method has been most widely applied to electroencephalogram (EEG) feature extraction to classify motor imagery (MI) in brain-computer interface (BCI) applications. The effectiveness of CSP is determined by the quality of interception in a specific time window and frequency band. Although numerous algorithms have been designed to optimize CSP by splitting the EEG data with a sliding time window and dividing the frequency bands with a set of band-pass filters, simultaneously. However, they did not consider the drawbacks of the rapid increase in data volume and feature dimensions brought about by this method, which would reduce the classification accuracy and calculation efficiency of the model. Therefore, we propose an optimal channel-based sparse time-frequency blocks common spatial pattern (OCSB-CSP) feature extraction method to improve the model classification accuracy and computational efficiency. Comparative experiments on two public EEG datasets show that the proposed method can quickly select significant time-frequency blocks and improve classification performance. The average classification accuracies are higher than those of other winners' methods, providing a new idea for the improvement of BCI applications.

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