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Research on Single-trial EEG Decoding-based Class Bootstrap Method for Lie Prediction
其他题名基于单试次脑电解码的类自举法谎言预测研究
Bai, Shuai-Shuai1; Chen, Chao1,2; Wei, Wei3; Dai, Lu-Yao4,5; Liu, Ye4,5; Qiu, Shuang3,6; He, Hui-Guang3,6
通讯作者邮箱wei, wei
心理所单位排序4
摘要

Lie detection techniques based on electroencephalogram (EEG) rely on the effective decoding of event-related potential (ERP). At present, manual design features are mainly used for EEG analysis. In recent years, the single-trial EEG classification method has made progress. End-to-end EEG classification methods can realize automatically extract features from EEG and classify, which lacks research and application in lie detection, also those methods cannot be directly applied in lie detection. In this study, we designed the autobiographical-based face recognition task based on a complex trial protocol (CTP) and the EEG of 18 subjects was collected. The application of different single-trial ERP classification methods in lie detection are studied. A class bootstrap method is proposed to solve the problem that the single-trial EEG decoding method cannot be applied to practice directly. The class bootstrap method was based on the assumption of data distribution, the probe stimulus was deduced by comparing the classification performance of classifiers that were trained when each category of stimulus images was set as probe stimuli. The experimental results show that the proposed class bootstrap method outperforms the traditional lie detection method and can accurately predict lies when only a small amount of EEG data is used.

其他摘要

摘要基于脑电(Electroencephalogram, EEG)的谎言检测技术依赖于对事件相关电位(Event-related potential ERP)的有效解码当前主要采用手工设计特征进行脑电分析.近年来单试次脑电分类方法取得了长足进步其中端到端的脑电分类方法能够实现对脑电的自动特征提取和分类但在谎言检测中缺乏研究和应用同时存在无法在测谎场景下直 接应用的问题.本研究设计基于复合反应范式(Complex trial protocol, GTP)进行自我面孔信息识别任务的实验采集了18名被试的脑电数据.研究了不同端到端的单试次ERP分类方法在谎言检测中的应用同时针对单试次脑电解码方法无法直接实际应用的问题提出了一种类自举算法.算法基于数据分布假设通过对比各类刺激图像被视为探针刺激时所训练模型的性能来推断真正的探针刺激.实验结果表明在基于自我面孔信息的GTP的谎言预测中所提出的类自举法性能优于传统探针预测方法,在仅使用少量脑电数据情况下,可实现准确的谎言预测.

关键词Electroencephalogram (EEG) lie prediction event-related potential (ERP) complex trial protocol (CTP) class bootstrap method
2023
语种英语
DOI10.16383/j.aas.c220341
发表期刊Zidonghua Xuebao/Acta Automatica Sinica
ISSN0254-4156
卷号49期号:10页码:2084-2093
收录类别EI
引用统计
文献类型期刊论文
条目标识符http://ir.psych.ac.cn/handle/311026/46276
专题脑与认知科学国家重点实验室
作者单位1.Tianjin Key Laboratory of Complex System Control Theory and Application, Tianjin University of Technology, Tianjin; 300384, China
2.Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin; 300072, China
3.Research Center for Brain-Inspired Intelligence, National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing; 100190, China
4.State Key Laboratory of Brain and Cognitive Science, Institute of Psychology, Chinese Academy of Sciences, Beijing; 100101, China
5.Department of Psychology, University of Chinese Academy of Sciences, Beijing; 100049, China
6.School of Artificial Intelligence, University of Chinese Academy of Sciences, Beijing; 100049, China
推荐引用方式
GB/T 7714
Bai, Shuai-Shuai,Chen, Chao,Wei, Wei,et al. Research on Single-trial EEG Decoding-based Class Bootstrap Method for Lie Prediction[J]. Zidonghua Xuebao/Acta Automatica Sinica,2023,49(10):2084-2093.
APA Bai, Shuai-Shuai.,Chen, Chao.,Wei, Wei.,Dai, Lu-Yao.,Liu, Ye.,...&He, Hui-Guang.(2023).Research on Single-trial EEG Decoding-based Class Bootstrap Method for Lie Prediction.Zidonghua Xuebao/Acta Automatica Sinica,49(10),2084-2093.
MLA Bai, Shuai-Shuai,et al."Research on Single-trial EEG Decoding-based Class Bootstrap Method for Lie Prediction".Zidonghua Xuebao/Acta Automatica Sinica 49.10(2023):2084-2093.
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