Detection of virtual reality motion sickness based on EEG using asymmetry of entropy and cross-frequency coupling

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Chengcheng Hua , Lining Chai , Zhanfeng Zhou , Jianlong Tao , Ying Yan , Xu Chen , Jia Liu , Rongrong Fu
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引用次数: 0

Abstract

The existence of Virtual Reality Motion Sickness (VRMS) is a key factor restricting the further development of the VR industry, and the premise to solve this problem is to be able to accurately and effectively detect its occurrence. In view of the current lack of high-accuracy and effective detection methods, this paper proposes a VRMS detection method based on entropy asymmetry and cross-frequency coupling value asymmetry of EEG. First of all, the EEG of the four selected pairs of electrodes on the bilateral brain are subjected to Multivariate Variational Mode Decomposition (MVMD) respectively, and three types of entropy values on the low-frequency and high-frequency components are calculated, namely approximate entropy, fuzzy entropy and permutation entropy, as well as three types of phase-amplitude coupling features between the low-frequency and high-frequency components, namely the mean value, standard deviation and correlation coefficient; Secondly, the difference of the entropies and the cross-frequency coupling features between the left electrodes and the right electrodes are calculated; Finally, the final feature set are selected via t-test and fed into the SVM for classification, thus realizing the automatic detection of VRMS. The results show that the three classification indexes under this method, i.e., accuracy, sensitivity and specificity, reach 99.5 %, 99.3 % and 99.7 %, respectively, and the value of the area under the ROC curve reached 1, which proves that this method can be an effective indicator for detecting the occurrence of VRMS.

利用熵的不对称性和跨频耦合,基于脑电图检测虚拟现实运动病。
虚拟现实晕动症(VRMS)的存在是制约虚拟现实产业进一步发展的关键因素,而解决这一问题的前提是能够准确有效地检测出其发生。鉴于目前缺乏高精度、有效的检测方法,本文提出了一种基于脑电图熵不对称和跨频耦合值不对称的 VRMS 检测方法。首先,对选取的四对双侧脑电极的脑电图分别进行多变量变异模式分解(MVMD),计算出低频成分和高频成分的三种熵值,即近似熵、模糊熵和置换熵,以及低频成分和高频成分之间的三种相幅耦合特征,即均值、标准差和相关系数;其次,计算左电极和右电极之间的熵差和跨频耦合特征;最后,通过 t 检验筛选出最终特征集,并输入 SVM 进行分类,从而实现 VRMS 的自动检测。结果表明,该方法的准确度、灵敏度和特异度三项分类指标分别达到 99.5%、99.3% 和 99.7%,ROC 曲线下面积值达到 1,证明该方法可作为检测 VRMS 发生的有效指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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