基于功率谱密度特征的人类脑电波识别熟悉和不熟悉物体的研究

Ahmad Farizal, A. Wibawa, D. P. Wulandari, Yuri Pamungkas
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引用次数: 0

摘要

脑电图技术在讯问测谎中的应用研究已受到广泛关注。然而,目前还没有一种脑电图方法被证明是完全可靠的测谎方法。因此,有必要进一步研究如何在除测谎仪之外的审讯工具中利用大脑信号,而测谎仪仍然是执法部门破案时常用的工具。这项额外的研究有望产生有效的数据和更可靠的方法来分析脑电图信号。从这项研究中获得的参数可用于开发人工智能驱动的计算机系统,该系统可以根据大脑信号检测出某人是否在撒谎。这项研究使用功率谱密度(PSD)分析来调查20名观看熟悉和不熟悉图像的参与者的大脑活动。在alpha、beta和gamma频率范围内采集颞区特定通道(T3、T4、T5、T6)和枕区特定通道(O1、O2)的脑电数据。结果表明,当受试者未识别图像对象时,在指定通道T3、T4、T5和T6上观察到的PSD值较高。此外,当参与者无法识别物体时,O2通道显示右脑活动增加。采用机器学习算法对数据进行分类,其中Random Forest方法的准确率最高,达到95.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of Human Brain Waves (EEG) to Recognize Familiar and Unfamiliar Objects Based on Power Spectral Density Features
Research into the application of EEG technology for lie detection during interrogation has gained significant popularity. However, no EEG method has yet proven to be entirely reliable for lie detection. Therefore, further research is necessary to develop a roadmap for utilizing brain signals in interrogation tools other than the Polygraph, which is still commonly used by law enforcement to solve crimes. This additional research is expected to yield valid data and more dependable methods for analyzing EEG signals. The parameters obtained from this research can be used to develop AI-powered computer systems that can detect when someone is lying based on their brain signals. This study used Power Spectral Density (PSD) analysis to investigate brain activity in 20 participants who viewed familiar and unfamiliar images. EEG data were collected from specific channels (T3, T4, T5, T6) in the temporal region, as well as channels (O1, O2) in the occipital region, across the alpha, beta, and gamma frequency ranges. The findings revealed that the PSD values observed on the specified channels T3, T4, T5, and T6 were higher when participants did not recognize the image object. Additionally, channel O2 showed increased right-brain activity when participants failed to recognize the object. Machine learning algorithms were employed to classify the data, with the Random Forest method achieving the highest accuracy at 95.4%.
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