Tian Wenli, Li Ming, Ju Xiangyu, Liu Yadong
College of Intelligence Science and Technology, National University of Defense Technology, Changsha 410073, China.
Brain Sci. 2022 Aug 12;12(8):1072. doi: 10.3390/brainsci12081072.
EEG-based human identification has gained a wide range of attention due to the further increase in demand for security. How to improve the accuracy of the human identification system is an issue worthy of attention. Using more features in the human identification system is a potential solution. However, too many features may cause overfitting, resulting in the decline of system accuracy. In this work, the graph convolutional neural network (GCN) was adopted for classification. Multiple features were combined and utilized as the structure matrix of the GCN. Because of the constant signal matrix, the training parameters would not increase as the structure matrix grows. We evaluated the classification accuracy on a classic public dataset. The results showed that utilizing multiple features of functional connectivity (FC) can improve the accuracy of the identity authentication system, the best results of which are at 98.56%. In addition, our methods showed less sensitivity to channel reduction. The method proposed in this paper combines different FCs and reaches high classification accuracy for unpreprocessed data, which inspires reducing the system cost in the actual human identification system.
由于安全需求的进一步增加,基于脑电图(EEG)的身份识别受到了广泛关注。如何提高身份识别系统的准确性是一个值得关注的问题。在身份识别系统中使用更多特征是一种潜在的解决方案。然而,过多的特征可能会导致过拟合,从而导致系统准确性下降。在这项工作中,采用图卷积神经网络(GCN)进行分类。多个特征被组合并用作GCN的结构矩阵。由于信号矩阵不变,训练参数不会随着结构矩阵的增长而增加。我们在一个经典的公共数据集上评估了分类准确性。结果表明,利用功能连接性(FC)的多个特征可以提高身份认证系统的准确性,其最佳结果为98.56%。此外,我们的方法对通道减少的敏感性较低。本文提出的方法结合了不同的FC,对未预处理的数据达到了较高的分类准确率,这为在实际身份识别系统中降低系统成本提供了启示。