Huang Jing-Shan, Liu Wan-Shan, Yao Bin, Wang Zhan-Xiang, Chen Si-Fang, Sun Wei-Fang
School of Aerospace Engineering, Xiamen University, Xiamen, China.
Shenzhen Research Institute of Xiamen University, Shenzhen, China.
Front Neurosci. 2021 Nov 17;15:774857. doi: 10.3389/fnins.2021.774857. eCollection 2021.
The classification of electroencephalogram (EEG) signals is of significant importance in brain-computer interface (BCI) systems. Aiming to achieve intelligent classification of motor imagery EEG types with high accuracy, a classification methodology using the wavelet packet decomposition (WPD) and the proposed deep residual convolutional networks (DRes-CNN) is proposed. Firstly, EEG waveforms are segmented into sub-signals. Then the EEG signal features are obtained through the WPD algorithm, and some selected wavelet coefficients are retained and reconstructed into EEG signals in their respective frequency bands. Subsequently, the reconstructed EEG signals were utilized as input of the proposed deep residual convolutional networks to classify EEG signals. Finally, EEG types of motor imagination are classified by the DRes-CNN classifier intelligently. The datasets from BCI Competition were used to test the performance of the proposed deep learning classifier. Classification experiments show that the average recognition accuracy of this method reaches 98.76%. The proposed method can be further applied to the BCI system of motor imagination control.
脑电图(EEG)信号的分类在脑机接口(BCI)系统中具有重要意义。旨在实现对运动想象EEG类型的高精度智能分类,提出了一种使用小波包分解(WPD)和所提出的深度残差卷积网络(DRes-CNN)的分类方法。首先,将EEG波形分割为子信号。然后通过WPD算法获得EEG信号特征,并保留一些选定的小波系数并在其各自的频带中重建为EEG信号。随后,将重建的EEG信号用作所提出的深度残差卷积网络的输入以对EEG信号进行分类。最后,通过DRes-CNN分类器智能地对运动想象的EEG类型进行分类。使用来自BCI竞赛的数据集来测试所提出的深度学习分类器的性能。分类实验表明,该方法的平均识别准确率达到98.76%。所提出的方法可进一步应用于运动想象控制的BCI系统。