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Identifying Concealed Information Using Wavelet Feature Extraction and Support Vector Machine

机译:使用小波特征提取和支持向量机识别隐藏信息

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In this paper, a new approach based on wavelet feature extraction and support vector machine (SVM) is proposed to identify concealed information. Firstly, the wavelet coefficients of event related potential (ERP) in delta, theta, alpha and beta bands are extracted as useful features of brain activity responded to different stimulus information. Next, a Fisher discriminant criterion is applied to reduce the feature vector dimensions. Finally, a SVM classifier is employed to classify the data and the leave-one-out cross validation method is used for accuracy assessment. For the evaluation of the method, 16 subjects went through the designed CIT paradigm and their respective brain signals were recorded. The experimental results show that SVM classifier can effectively differentiate between concealed information and irrelevant information, and it achieves the maximum classification accuracy of 90.63%. The investigation also suggests that the wavelet decomposition coefficient can reflect more comprehensive time-frequency information correlating with deception, which can effectively distinguish concealed information between irrelevant information.
机译:本文提出了一种基于小波特征提取和支持向量机(SVM)的新方法来识别隐藏信息。首先,提取δ,θ,α和β频带中的事件相关电位(ERP)的小波系数,作为大脑活动的有用特征响应于不同的刺激信息。接下来,应用Fisher判别标准来减少特征向量维度。最后,采用SVM分类器来对数据进行分类,并且休假一交叉验证方法用于准确性评估。为了评估该方法,16个受试者通过设计的CIT范例,并记录了它们各自的大脑信号。实验结果表明,SVM分类器可以有效地区分隐藏信息和无关信息,实现最大分类精度为90.63%。调查还表明小波分解系数可以反映与欺骗相关的更全面的时频信息,这可以有效地区分无关信息之间的隐藏信息。

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