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首页> 外文期刊>International journal of psychophysiology: official journal of the International Organization of Psychophysiology >Reprint of “A new approach to analyze data from EEG-based concealed face recognition system”
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Reprint of “A new approach to analyze data from EEG-based concealed face recognition system”

机译:“一种分析基于EEG的隐藏面部识别系统的数据的新方法”

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Abstract The purpose of this study is to extend a feature set with non-linear features to improve classification rate of guilty and innocent subjects. Non-linear features can provide extra information about phase space. The Event-Related Potential (ERP) signals were recorded from 49 subjects who participated in concealed face recognition test. For feature extraction, at first, several morphological characteristics, frequency bands, and wavelet coefficients (we call them basic-features) are extracted from each single-trial ERP. Recurrence Quantification Analysis (RQA) measures are then computed as non-linear features from each single-trial. We apply Genetic Algorithm (GA) to select the best feature set and this feature set is used for classification of data using Linear Discriminant Analysis (LDA) classifier. Next, we use a new approach to improve classification results based on introducing an adaptive-threshold. Results indicate that our method is able to correctly detect 91.83% of subjects (45 correct detection of 49 subjects) using combination of basic and non-linear features, that is higher than 87.75% for basic and 79.59% for non-linear features. This shows that combination of non-linear and basic- features could improve classification rate. Highlights ? Using Recurrence Quantification Analysis (RQA) and adding them to the features which have been used in previous studies. ? Using a new data set that recorded in face-based protocol (49 subjects) to design our pattern recognition system. ? Introducing a new method to determine the role of each subject (guilty or innocent) from single trial EEGs.
机译:摘要本研究的目的是扩展具有非线性特征的功能集,以提高有罪和无辜受试者的分类率。非线性功能可以提供有关相位空间的额外信息。从参与隐藏的面部识别测试的49个科目中记录了与事件相关的电位(ERP)信号。对于特征提取,首先,从每次试用ERP提取几种形态特征,频带和小波系数(我们称之为基本功能)。然后将复发量化分析(RQA)测量计算为来自每次试验的非线性功能。我们应用遗传算法(GA)选择最佳功能集,此功能集用于使用线性判别分析(LDA)分类器进行数据分类。接下来,我们使用一种新方法来基于引入自适应阈值来改善分类结果。结果表明,我们的方法能够使用基本和非线性特征的组合来正确地检测91.83%的受试者(45检测49个受试者),其基本高于87.75%,对于非线性特征,79.59%。这表明非线性和基本特征的组合可以提高分类率。强调 ?使用复制量化分析(RQA)并将其添加到以前研究中使用的特征。还使用以基于面部的协议(49个科目)记录的新数据集来设计我们的模式识别系统。还介绍一种新方法来确定每次试验脑电图的每个受试者(内疚或无罪)的作用。

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