School of Mechanical Engineering, Northeast Electric Power University, Jilin City, Jilin Province 132012, China.
School of Mechanical Engineering, Northeast Electric Power University, Jilin City, Jilin Province 132012, China.
J Neurosci Methods. 2024 Jul;407:110136. doi: 10.1016/j.jneumeth.2024.110136. Epub 2024 Apr 19.
In the pursuit of finer Brain-Computer Interface commands, research focus has shifted towards classifying EEG signals for multiple tasks. While single-joint multitasking motor imagery provides support, distinguishing between EEG signals from the same joint remains challenging due to their similar brain spatial distribution.
We designed experiments involving three motor imagery tasks-wrist extension, wrist flexion, and wrist abduction-with six participants. Based on this, a single-joint multi-task motor imagery EEG signal recognition method using Empirical Wavelet Decomposition and Multi-Kernel Extreme Learning Machine is proposed. This method employs Empirical Wavelet Decomposition (EWT) for modal decomposition, screening, and reconstruction of raw EEG signals, feature extraction using Common Spatial Patterns (CSP), and classification using Multi-Kernel Extreme Learning Machine (MKELM).
After EWT processing, differences in time and frequency characteristics between EEG signals of different classes were enhanced, with the MKELM model achieving an average recognition accuracy of 91.93 %.
We compared EWT with Empirical Mode Decomposition (EMD), Variational Mode Decomposition (VMD), Local Mean Decomposition (LMD), and Wavelet Packet Decomposition (WPD). The results showed that the differences between various types of EEG signals processed by EWT were the most pronounced. The MKELM model outperformed traditional machine learning models such as Extreme Learning Machine (ELM), Support Vector Machine (SVM), K-Nearest Neighbors (KNN), and Linear Discriminant Analysis (LDA) in terms of recognition performance, and also exhibited faster training speeds than deep learning models such as Bayesian Convolutional Neural Network (BCNN) and Attention-based Dual-scale Fusion Convolutional Neural Network (ADFCNN). In summary, the proposed method provides a new approach for achieving finer Brain-Computer Interface commands.
在追求更精细的脑机接口命令的过程中,研究重点已经转向对多任务的 EEG 信号进行分类。虽然单关节多任务运动想象提供了支持,但由于它们具有相似的脑空间分布,因此仍然难以区分来自同一关节的 EEG 信号。
我们设计了涉及三个运动想象任务(腕伸展、腕弯曲和腕外展)的实验,共有六名参与者。在此基础上,提出了一种基于经验模态分解和多核极限学习机的单关节多任务运动想象 EEG 信号识别方法。该方法采用经验模态分解(EWT)对原始 EEG 信号进行模态分解、筛选和重构,使用共空间模式(CSP)进行特征提取,使用多核极限学习机(MKELM)进行分类。
经过 EWT 处理后,不同类别的 EEG 信号在时间和频率特征上的差异得到了增强,MKELM 模型的平均识别准确率达到了 91.93%。
我们将 EWT 与经验模态分解(EMD)、变分模态分解(VMD)、局部均值分解(LMD)和小波包分解(WPD)进行了比较。结果表明,EWT 处理后的各种类型的 EEG 信号之间的差异最为明显。MKELM 模型在识别性能方面优于传统的机器学习模型,如极限学习机(ELM)、支持向量机(SVM)、K-最近邻(KNN)和线性判别分析(LDA),同时也比深度学习模型,如贝叶斯卷积神经网络(BCNN)和基于注意力的双尺度融合卷积神经网络(ADFCNN)具有更快的训练速度。综上所述,该方法为实现更精细的脑机接口命令提供了一种新的方法。