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Functional brain network and multichannel analysis for the P300-based brain computer interface system of lying detection

机译:基于P300的说谎检测脑计算机接口系统的功能脑网络和多通道分析

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Deception is a complex cognition process which involves activities in different brain regions. However, most of the ERP based lie detection systems focus on the features of ERPs from few channels. In this study, we designed a multi-channel ERP based brain computer interface (BCI) system for lie detection. Based on this, two new EEG feature selection approaches, bootstrapped geometric difference (BGD) and network analysis were proposed and applied to feature recognition and classification system. Unlike other methods, our approaches focus on the changes of EEGs from different brain regions and the correlation between them. For the test, we focus on visual and auditory stimuli, two groups of subjects went through the test and their EEGs were recorded. For all subjects, BGD of the P300 for all the scalp electrodes combined with SVM classifier showed the average rate of recognition accuracy was 84.4% and 82.2% for visual and auditory modality respectively. Statistical analysis of network features indicated the difference in the two groups were significant and the average accuracy rate reached 88.7% and 83.5% respectively, and the guilty group showed more obvious small-world property than innocent group. The results suggest the BGD and network analysis based approaches combined with SVM are efficient for ERP based expert and intelligent system for detection and evaluation of deception. The combination of these methods and other feature selection approaches can promote the development and application of ERP based lie detection system.(C) 2016 Elsevier Ltd. All rights reserved.
机译:欺骗是一个复杂的认知过程,涉及不同大脑区域的活动。但是,大多数基于ERP的测谎系统都只关注少数几个渠道的ERP的功能。在这项研究中,我们设计了一个基于多通道ERP的脑部计算机接口(BCI)系统,用于测谎。在此基础上,提出了两种新的脑电特征选择方法:自举几何差(BGD)和网络分析法,并将其应用于特征识别和分类系统。与其他方法不同,我们的方法关注于来自不同大脑区域的脑电图的变化及其之间的相关性。对于测试,我们专注于视觉和听觉刺激,两组受试者进行了测试并记录了他们的脑电图。对于所有受试者,所有头皮电极与SVM分类器相结合的P300的BGD显示,视觉和听觉方式的平均识别准确率分别为84.4%和82.2%。网络特征的统计分析表明,两组之间的差异显着,平均准确率分别达到88.7%和83.5%,有罪组比无辜组具有更明显的小世界财产。结果表明,基于BGD和网络分析的方法与SVM相结合,对于基于ERP的专家和智能系统,可以有效地进行欺骗的检测和评估。这些方法和其他特征选择方法的组合可以促进基于ERP的测谎系统的开发和应用。(C)2016 Elsevier Ltd.保留所有权利。

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