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基于位置先验加权排列熵和二进制引力搜索算法的新型信道选择方法。

Novel channel selection method based on position priori weighted permutation entropy and binary gravity search algorithm.

作者信息

Sun Hao, Jin Jing, Kong Wanzeng, Zuo Cili, Li Shurui, Wang Xingyu

机构信息

Key Laboratory of Advanced Control and Optimization for Chemical Processes, Ministry of Education, East China University of Science and Technology, Shanghai, People's Republic of China.

School of Computer Science, Hangzhou Dianzi University, Hangzhou, China.

出版信息

Cogn Neurodyn. 2021 Feb;15(1):141-156. doi: 10.1007/s11571-020-09608-3. Epub 2020 Jun 26.

Abstract

Brain-computer interface (BCI) system based on motor imagery (MI) usually adopts multichannel Electroencephalograph (EEG) signal recording method. However, EEG signals recorded in multi-channel mode usually contain many redundant and artifact information. Therefore, selecting a few effective channels from whole channels may be a means to improve the performance of MI-based BCI systems. We proposed a channel evaluation parameter called position priori weight-permutation entropy (PPWPE), which include amplitude information and position information of a channel. According to the order of PPWPE values, we initially selected half of the channels with large PPWPE value from all sampling electrode channels. Then, the binary gravitational search algorithm (BGSA) was used in searching a channel combination that will be used in determining an optimal channel combination. The features were extracted by common spatial pattern (CSP) method from the final selected channels, and the classifier was trained by support vector machine. The PPWPE + BGSA + CSP channel selection method is validated on two data sets. Results showed that the PPWPE + BGSA + CSP method obtained better mean classification accuracy (88.0% vs. 57.5% for Data set 1 and 91.1% vs. 79.4% for Data set 2) than All-C + CSP method. The PPWPE + BGSA + CSP method can achieve higher classification in fewer channels selected. This method has great potential to improve the performance of MI-based BCI systems.

摘要

基于运动想象(MI)的脑机接口(BCI)系统通常采用多通道脑电图(EEG)信号记录方法。然而,多通道模式下记录的EEG信号通常包含许多冗余和伪迹信息。因此,从所有通道中选择少数有效通道可能是提高基于MI的BCI系统性能的一种方法。我们提出了一种通道评估参数,称为位置先验权重排列熵(PPWPE),它包含通道的幅度信息和位置信息。根据PPWPE值的顺序,我们首先从所有采样电极通道中初步选择PPWPE值较大的一半通道。然后,使用二进制引力搜索算法(BGSA)搜索用于确定最优通道组合的通道组合。通过共同空间模式(CSP)方法从最终选择的通道中提取特征,并使用支持向量机训练分类器。在两个数据集上验证了PPWPE + BGSA + CSP通道选择方法。结果表明,PPWPE + BGSA + CSP方法比全通道(All-C)+ CSP方法获得了更好的平均分类准确率(数据集1为88.0%对57.5%,数据集2为91.1%对79.4%)。PPWPE + BGSA + CSP方法可以在选择较少通道的情况下实现更高的分类准确率。该方法在提高基于MI的BCI系统性能方面具有很大潜力。

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