Tan Xiyue, Wang Dan, Chen Jiaming, Xu Meng
Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Bioengineering (Basel). 2023 May 18;10(5):609. doi: 10.3390/bioengineering10050609.
Exploring the effective signal features of electroencephalogram (EEG) signals is an important issue in the research of brain-computer interface (BCI), and the results can reveal the motor intentions that trigger electrical changes in the brain, which has broad research prospects for feature extraction from EEG data. In contrast to previous EEG decoding methods that are based solely on a convolutional neural network, the traditional convolutional classification algorithm is optimized by combining a transformer mechanism with a constructed end-to-end EEG signal decoding algorithm based on swarm intelligence theory and virtual adversarial training. The use of a self-attention mechanism is studied to expand the receptive field of EEG signals to global dependence and train the neural network by optimizing the global parameters in the model. The proposed model is evaluated on a real-world public dataset and achieves the highest average accuracy of 63.56% in cross-subject experiments, which is significantly higher than that found for recently published algorithms. Additionally, good performance is achieved in decoding motor intentions. The experimental results show that the proposed classification framework promotes the global connection and optimization of EEG signals, which can be further applied to other BCI tasks.
探索脑电图(EEG)信号的有效特征是脑机接口(BCI)研究中的一个重要问题,其结果能够揭示触发大脑电变化的运动意图,这对于从EEG数据中提取特征具有广阔的研究前景。与以往仅基于卷积神经网络的EEG解码方法不同,传统卷积分类算法通过将Transformer机制与基于群体智能理论和虚拟对抗训练构建的端到端EEG信号解码算法相结合进行优化。研究了自注意力机制的使用,以将EEG信号的感受野扩展到全局依赖性,并通过优化模型中的全局参数来训练神经网络。所提出的模型在真实世界的公共数据集上进行评估,在跨受试者实验中实现了63.56%的最高平均准确率,显著高于最近发表的算法。此外,在解码运动意图方面也取得了良好的性能。实验结果表明,所提出的分类框架促进了EEG信号的全局连接和优化,可进一步应用于其他BCI任务。