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A Synergistic Concealed Information Test With Novel Approach for EEG Channel Selection and SVM Parameter Optimization

机译:新方法的脑电信号通道选择和支持向量机参数优化的协同隐蔽信息测试

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摘要

In the era of data, it is a challenging task to classify continuous data such as electroencephalographic data. The electroencephalographic signal maps several thoughts going in an individual's brain by connecting a device to the human brain. In this paper, we have proposed a deceit identification system using a test called "concealed information test." The electroencephalographic data have been recorded when the concealed information test is performed for experimental analysis. To enhance the performance of the deceit identification system, the optimization of support vector machine (SVM) parameters and the selection of the EEG channels are performed. This paper implements a binary version of the BAT algorithm (binary BAT algorithm) and the conventional BAT algorithm on the electroencephalography (EEG) data. A novel cost function is also proposed, which utilizes the results of continuous BAT and binary BAT to enhance the system performance. In this synergistic approach, BAT is used for the SVM parameters optimization, and the binary BAT algorithm is applied for the EEG channel selection. The performance of the system is improved, and it is inferred that the channels placed at the occipital lobe of the brain consist of the artifacts. After removing the channels placed on the occipital lobe, i.e., O1, Oz, and O2, and using the optimized SVM parameters, the system's average accuracy increases from 94.11% to 96.8%.
机译:在数据时代,对诸如脑电图数据之类的连续数据进行分类是一项艰巨的任务。脑电图信号通过将设备连接到人脑来映射进入人脑的几种想法。在本文中,我们提出了一种使用称为“隐藏信息测试”的测试的欺骗识别系统。当执行隐藏信息测试以进行实验分析时,已记录了脑电图数据。为了提高欺骗识别系统的性能,执行了支持向量机(SVM)参数的优化和EEG通道的选择。本文在脑电图(EEG)数据上实现了BAT算法(二进制BAT算法)和常规BAT算法的二进制版本。还提出了一种新颖的成本函数,该函数利用连续BAT和二进制BAT的结果来增强系统性能。在这种协同方法中,BAT用于SVM参数优化,而二进制BAT算法则用于EEG通道选择。该系统的性能得到了改善,并且可以推断出位于大脑枕叶的通道由伪影组成。删除枕叶上的通道O1,Oz和O2,并使用优化的SVM参数后,系统的平均准确度从94.11%提高到96.8%。

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