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Channel Selection of EEG-Based Cybersickness Recognition during Playing Video Game Using Correlation Feature Selection (CFS)

机译:使用相关特征选择播放视频游戏期间基于EEG的Cyber​​ickness识别的频道选择(CFS)

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Recently, the rapid development of 3D movie or video games, causing the phenomenon of cybersickness. Cybersickness is an unpleasant symptom (dizziness, nausea, vomiting, and disorientation) that occur to humans when exposure in 3D movie or video games within a certain time. It can disrupt psychic and physical condition of the human if not handled appropriately. Many studies have been done to investigate cybersickness using physiological measurements, one of which is EEG. However, earlier studies have not discussed an optimal channel location for identifying cybersickness on EEG. In this paper, we proposed Correlation Feature Selection (CFS) method to select features in order to determine best channel selection. The power percentage (PP) features of alpha (α), beta (β) and theta (θ) bands were extracted on all channels. CFS method obtained 3 optimal channels location on F3, O1, and O2 from PP feature of beta (β) band. The investigating of cybersickness employs three compare classifiers i.e. SVM-RBF, k-NN, and LDA. According to our result, LDA is the best classifier for identifying cybersickness. By using CFS method, it can improve performance accuracy from 83% to 100 %. Hence, we conclude that beta frequency band on frontal and occipital area is suitable to measure EEG-based cybersickness.
机译:最近,3D电影或视频游戏的快速发展,造成了网络内的现象。 Cyber​​ickness是一种令人不快的症状(头晕,恶心,呕吐和迷失化),当在一定时间内在3D电影或视频游戏中曝光时,会发生在人类中。如果没有适当处理,它可以破坏人类的心理和身体状况。已经使用了许多研究来使用生理测量来调查Cyber​​ickness,其中一个是脑电图。然而,早期的研究尚未讨论用于识别EEG上的Cyber​​ickness的最佳频道位置。在本文中,我们提出了相关特征选择(CFS)方法来选择特征,以便确定最佳频道选择。在所有通道上提取α(α),β(β)和θ(θ)带的功率百分比(pp)特征。 CFS方法在F3,O1和O2上获得了来自Beta(β)频带的PP特征的3最优通道位置。调查Cyber​​ickness采用三个比较分类器i.e.SVM-RBF,K-NN和LDA。根据我们的结果,LDA是用于识别Cyber​​ickness的最佳分类器。通过使用CFS方法,可以提高83%至100%的性能精度。因此,我们得出结论,前方和枕骨面积上的β频带适合测量基于EEG的Cyber​​ickness。

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