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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >BrainPrint: EEG biometric identification based on analyzing brain connectivity graphs
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BrainPrint: EEG biometric identification based on analyzing brain connectivity graphs

机译:BrainPrint:基于分析脑连接图的EEG生物识别

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Research on brain biometrics using electroencephalographic (EEG) signals has received increasing attentions in recent years. In particular, it has been recognized that the brain functional connectivity reflects individual variability. However, many questions need to be answered before we can properly use distinctive characteristics of brain connectivity for biometric applications. This paper proposes a graph-based method for EEG biometric identification. It consists of a network estimation module to generate brain connectivity networks and a graph analysis module to generate topological features based on brain networks. Specifically, we investigate seven different connectivity metrics for the network estimation module, each of which is characterized by a certain signal interaction mechanism, defining a peculiar subjective brain network. A new connectivity metric is proposed based on the algorithmic complexity of EEG signals from a information-theoretic perspective. Meanwhile, six nodal features and six global features are proposed and studied for the graph analysis module. A comprehensive evaluation is carried out to assess the impact of different connectivity metrics, graph features, and EEG frequency bands on biometric identification performance. The results demonstrate that the graph-based method proposed in this study is effective in improving the recognition rate and inter-state stability of EEG-based biometric identification systems. Our findings about the network patterns and graph features bring a further understanding of distinctiveness of humans' EEG functional connectivity and provide useful guidance for the design of graph-based EEG biometric systems. (C) 2020 Elsevier Ltd. All rights reserved.
机译:近年来,使用脑电图(EEG)信号的脑生物识别学研究了近年来的注意。特别地,已经认识到脑功能连通性反映了个体变异性。然而,在我们可以正确使用脑连接的独特特征之前,需要回答许多问题。本文提出了一种基于图形的EEG生物识别方法的方法。它由网络估计模块组成,用于生成大脑连接网络和图形分析模块,以产生基于脑网络的拓扑功能。具体地,我们研究了网络估计模块的七种不同的连接度量,每个连接度量的特征在于某种信号交互机制,定义特殊的主观脑网络。基于来自信息理论观点的EEG信号的算法复杂度提出了一种新的连接度量。同时,提出了六种节点特征和六个全局特征,并研究了曲线图分析模块。进行全面评估,以评估不同连接度量,图形功能和脑电图频段对生物识别性能的影响。结果表明,本研究提出的基于图的方法是有效地改善基于EEG的生物识别系统的识别率和状态稳定性。我们关于网络模式和图表特征的调查结果进一步了解人类EEG功能连接的独特性,并为基于图形的EEG生物系统的设计提供了有用的指导。 (c)2020 elestvier有限公司保留所有权利。

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