Key Laboratory of Smart Manufacturing in Energy Chemical Process, Ministry of Education, East China University of Science and Technology, Shanghai, China.
Key Laboratory of Smart Manufacturing in Energy Chemical Process, Ministry of Education, East China University of Science and Technology, Shanghai, China; Shenzhen Research Institute of East China University of Science and Technology, Shen Zhen 518063, China.
J Neurosci Methods. 2023 Nov 1;399:109969. doi: 10.1016/j.jneumeth.2023.109969. Epub 2023 Sep 6.
Learning distinguishable features from raw EEG signals is crucial for accurate classification of motor imagery (MI) tasks. To incorporate spatial relationships between EEG sources, we developed a feature set based on an EEG graph. In this graph, EEG channels represent the nodes, with power spectral density (PSD) features defining their properties, and the edges preserving the spatial information. We designed an EEG based graph self-attention network (EGSAN) to learn low-dimensional embedding vector for EEG graph, which can be used as distinguishable features for motor imagery task classification. We evaluated our EGSAN model on two publicly available MI EEG datasets, each containing different types of motor imagery tasks. Our experiments demonstrate that our proposed model effectively extracts distinguishable features from EEG graphs, achieving significantly higher classification accuracies than existing state-of-the-art methods.
从原始 EEG 信号中学习可区分的特征对于准确分类运动想象 (MI) 任务至关重要。为了整合 EEG 源之间的空间关系,我们开发了一种基于 EEG 图的特征集。在这个图中,EEG 通道表示节点,其属性由功率谱密度 (PSD) 特征定义,边缘保留了空间信息。我们设计了一个基于 EEG 的图自注意网络 (EGSAN),用于学习 EEG 图的低维嵌入向量,该向量可作为运动想象任务分类的可区分特征。我们在两个公开可用的 MI EEG 数据集上评估了我们的 EGSAN 模型,每个数据集都包含不同类型的运动想象任务。我们的实验表明,我们提出的模型能够有效地从 EEG 图中提取可区分的特征,实现了比现有最先进方法更高的分类精度。