论文标题
GCNS网络:用于解码时间分辨EEG运动图像信号的图形卷积神经网络方法
GCNs-Net: A Graph Convolutional Neural Network Approach for Decoding Time-resolved EEG Motor Imagery Signals
论文作者
论文摘要
高度要求为开发有效,有效的脑部计算机界面(BCI)系统,高度要求通过脑电图(EEG)测量的脑活动的精确解码。传统作品对脑电图进行了分类,而无需考虑电极之间的拓扑关系。但是,神经科学研究越来越强调大脑动力学的网络模式。因此,电极的欧几里得结构可能无法充分反映信号之间的相互作用。为了填补空白,提出了一个基于图形卷积神经网络(GCN)的新型深度学习框架,以增强不同类型的运动成像(MI)任务期间原始EEG信号的解码性能,同时与电极的功能性拓扑关系合作。基于绝对Pearson的整体信号矩阵,建立了EEG电极的图形Laplacian。图形卷积层构建的GCN-NET学习了广义特征。随后的池层降低了维度,并且完全连接的软磁层层得出了最终预测。已经显示出引入的方法可以融合个性化和群体的预测。与现有研究相比,它的平均准确性最高的准确性,93.06%和88.57%(Physionet数据集),96.24%和80.89%(高伽马数据集),分别在受试者和组水平上分别与现有研究相比,这表明适应性和对个体可变性的适应性和鲁棒性。此外,在重复实验中进行交叉验证,该性能稳定可复制。我们方法的出色表现表明,这是迈向更好的BCI方法的重要一步。总而言之,基于功能拓扑关系的GCN-NET过滤器EEG信号,该信号设法解码了脑运动图像的相关特征。
Towards developing effective and efficient brain-computer interface (BCI) systems, precise decoding of brain activity measured by electroencephalogram (EEG), is highly demanded. Traditional works classify EEG signals without considering the topological relationship among electrodes. However, neuroscience research has increasingly emphasized network patterns of brain dynamics. Thus, the Euclidean structure of electrodes might not adequately reflect the interaction between signals. To fill the gap, a novel deep learning framework based on the graph convolutional neural networks (GCNs) is presented to enhance the decoding performance of raw EEG signals during different types of motor imagery (MI) tasks while cooperating with the functional topological relationship of electrodes. Based on the absolute Pearson's matrix of overall signals, the graph Laplacian of EEG electrodes is built up. The GCNs-Net constructed by graph convolutional layers learns the generalized features. The followed pooling layers reduce dimensionality, and the fully-connected softmax layer derives the final prediction. The introduced approach has been shown to converge for both personalized and group-wise predictions. It has achieved the highest averaged accuracy, 93.06% and 88.57% (PhysioNet Dataset), 96.24% and 80.89% (High Gamma Dataset), at the subject and group level, respectively, compared with existing studies, which suggests adaptability and robustness to individual variability. Moreover, the performance is stably reproducible among repetitive experiments for cross-validation. The excellent performance of our method has shown that it is an important step towards better BCI approaches. To conclude, the GCNs-Net filters EEG signals based on the functional topological relationship, which manages to decode relevant features for brain motor imagery.