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Open Access Research Article Issue
Copula Transfer Entropy-Based Channel Selection for MEG Motor Imagery Brain Computer Interfaces
Tsinghua Science and Technology 2026, 31(3): 1474-1486
Published: 19 December 2025
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Brain Computer Interfaces (BCIs) based on magnetoencephalography (MEG) signals for Motor Imagery (MI) have the potential to help stroke patients recover neurologically and improve motor function in healthy individuals. While multi-channel MEG data provide high spatio-temporal resolution, not all channels contribute equally to the performance of BCI systems. We have taken the causal interactions between the channels of MEG signals in different trials of MI-BCIs into account. Therefore, a novel MEG channel selection method based on copula transfer entropy is proposed to reduce noise and redundant information. Effective features are extracted using the regularized common spatial pattern approach after channel selection. Finally, a support vector machine classifier with a radial basis function kernel is employed to classify MI tasks involving both hands and both feet movements. The effectiveness of the proposed method is validated on a publicly available MEG-BCI dataset. Experimental results demonstrate a significant improvement in classification accuracy and a substantial reduction in the number of selected channels compared to using all channels, for both intra-session and inter-session classifications. Furthermore, our selection method achieves significantly higher classification accuracy than the state-of-the-art methods in MEG-MI field.

Open Access Research Article Issue
Comparison of cross-subject EEG emotion recognition algorithms in the BCI Controlled Robot Contest in World Robot Contest 2021
Brain Science Advances 2022, 8(2): 142-152
Published: 29 June 2022
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Electroencephalogram (EEG) data depict various emotional states and reflect brain activity. There has been increasing interest in EEG emotion recognition in brain-computer interface systems (BCIs). In the World Robot Contest (WRC), the BCI Controlled Robot Contest successfully staged an emotion recognition technology competition. Three types of emotions (happy, sad, and neutral) are modeled using EEG signals. In this study, 5 methods employed by different teams are compared. The results reveal that classical machine learning approaches and deep learning methods perform similarly in offline recognition, whereas deep learning methods perform better in online cross-subject decoding.

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