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基于P300的测谎中脑电特征提取的一种新方法。

A new approach for EEG feature extraction in P300-based lie detection.

作者信息

Abootalebi Vahid, Moradi Mohammad Hassan, Khalilzadeh Mohammad Ali

机构信息

Electrical Engineering Department, Yazd University, Yazd, Iran.

出版信息

Comput Methods Programs Biomed. 2009 Apr;94(1):48-57. doi: 10.1016/j.cmpb.2008.10.001. Epub 2008 Nov 28.

Abstract

P300-based Guilty Knowledge Test (GKT) has been suggested as an alternative approach for conventional polygraphy. The purpose of this study was to extend a previously introduced pattern recognition method for the ERP assessment in this application. This extension was done by the further extending the feature set and also the employing a method for the selection of optimal features. For the evaluation of the method, several subjects went through the designed GKT paradigm and their respective brain signals were recorded. Next, a P300 detection approach based on some features and a statistical classifier was implemented. The optimal feature set was selected using a genetic algorithm from a primary feature set including some morphological, frequency and wavelet features and was used for the classification of the data. The rates of correct detection in guilty and innocent subjects were 86%, which was better than other previously used methods.

摘要

基于P300的有罪知识测试(GKT)已被提议作为传统测谎技术的一种替代方法。本研究的目的是在此应用中扩展先前引入的用于事件相关电位(ERP)评估的模式识别方法。这种扩展是通过进一步扩大特征集以及采用一种选择最优特征的方法来实现的。为了评估该方法,若干受试者经历了设计好的GKT范式,并记录了他们各自的脑信号。接下来,基于某些特征和统计分类器实现了一种P300检测方法。使用遗传算法从包括一些形态学、频率和小波特征的原始特征集中选择最优特征集,并将其用于数据分类。有罪和无罪受试者的正确检测率均为86%,这比之前使用的其他方法要好。

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