Wang Fan, Liu Huadong, Zhao Lei, Su Lei, Zhou Jianhua, Gong Anmin, Fu Yunfa
Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming, China.
Brain Cognition and Brain-Computer Intelligence Integration Group, Kunming University of Science and Technology, Kunming, China.
Front Hum Neurosci. 2022 May 6;16:880304. doi: 10.3389/fnhum.2022.880304. eCollection 2022.
Common spatial pattern (CSP) is an effective algorithm for extracting electroencephalogram (EEG) features of motor imagery (MI); however, CSP mainly aims at multichannel EEG signals, and its effect in extracting EEG features with fewer channels is poor-even worse than before using CSP. To solve the above problem, a new combined feature extraction method has been proposed in this study. For EEG signals from fewer channels (three channels), wavelet packet transform, fast ensemble empirical mode decomposition, and local mean decomposition were used to decompose the band-pass filtered EEG into multiple time-frequency components, and the corresponding components were selected according to the frequency characteristics of MI or the correlation coefficient between its time-frequency components and the original EEG signal. Furthermore, phase space reconstruction (PSR) was performed on the selected components after the three time-frequency decompositions, the maximum Lyapunov index was calculated, and the features were reconstructed; then, CSP projection mapping was used for the reconstructed features. The support vector machine probability output model was trained by the obtained three mappings. Probability outputs by three different support vector machines were then obtained. Finally, the classification of test samples was determined by the fusion of the Dempster-Shafer evidence theory at the decision level. The results showed that the accuracy of the proposed method was 95.71% on data set III of BCI competition II (left- and right-hand MI), which was 2.88% higher than the existing methods. On data set IIb of BCI competition IV, the average accuracy was 86.60%, which was 2.3% higher than the existing methods. This study verified the effectiveness of the proposed method and provided an approach for the research and development of the MI-BCI system based on fewer channels.
共同空间模式(CSP)是一种用于提取运动想象(MI)脑电图(EEG)特征的有效算法;然而,CSP主要针对多通道EEG信号,其在提取较少通道EEG特征方面的效果较差——甚至比使用CSP之前更差。为了解决上述问题,本研究提出了一种新的组合特征提取方法。对于较少通道(三个通道)的EEG信号,使用小波包变换、快速总体经验模态分解和局部均值分解将带通滤波后的EEG分解为多个时频分量,并根据MI的频率特征或其时频分量与原始EEG信号之间的相关系数选择相应的分量。此外,在三次时频分解后对所选分量进行相空间重构(PSR),计算最大Lyapunov指数并重构特征;然后,对重构后的特征使用CSP投影映射。通过获得的三个映射训练支持向量机概率输出模型。然后获得三种不同支持向量机的概率输出。最后,通过决策层的Dempster-Shafer证据理论融合确定测试样本的分类。结果表明,该方法在BCI竞赛II的数据集III(左手和右手MI)上的准确率为95.71%,比现有方法高2.88%。在BCI竞赛IV的数据集IIb上,平均准确率为86.60%,比现有方法高2.3%。本研究验证了该方法的有效性,并为基于较少通道的MI-BCI系统的研发提供了一种途径。