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.
翻译:开发有效和高效的大脑-计算机界面(BCI)系统,精确地解码以电脑图测量的大脑活动,这是非常需要的。传统工作对EEEG信号进行分类,而不考虑电极之间的表层关系。然而,神经科学研究越来越强调大脑动态的网络模式。因此,电极的Euclidean结构可能不能充分反映信号之间的相互作用。为了填补这一空白,根据图形共振神经神经网络(GCNs)推出一个新的深层次学习框架,以加强不同类型运动图像(MI)任务中原始EEEG信号的解码性能,同时与电极体功能的功能表层关系合作。基于绝对Pearson的总体信号矩阵,EEEG电极电极的图性能模型正在逐步增强。以图层图图层图构建的GCNSNet网络可以充分反映通用特征。接下来的层层层减少光度,而完全连接的软体层可以得出最终的预测。引入的方法显示,个人和群体对电极层(MI) 和电极的直线性关系的功能性关系关系将更趋近的系统化、98.06 和最高的OI 数据显示的精确性数据。它分别显示了88的G57%的状态。