论文标题

对虚拟现实中基于脑电图的网络智能分类的深度学习方法的回顾

A Review of Deep Learning Approaches to EEG-Based Classification of Cybersickness in Virtual Reality

论文作者

Yildirim, Caglar

论文摘要

Cyber​​sickness是暴露于虚拟现实(VR)体验的令人不愉快的副作用,它是指响应VR暴露而导致的恶心和头晕等生理影响。鉴于Cyber​​sickness对VR用户体验的衰弱影响,近年来,从生理测量中自动检测Cyber​​sickness的学术兴趣已成为近年来。脑电图(EEG)已被广泛用于捕获大脑的电活动的变化,并使用各种机器学习算法自动从脑波中分类Cyber​​sickness。深度学习(DL)算法的最新进展以及DL计算资源的可用性增加为在DL框架应用于基于eeg的基于Cyber​​sickness的检测中的应用方面为新的研究领域铺平了道路。因此,这项审查涉及对有关DL框架应用于EEG信号对Cyber​​sickness分类的同行评审论文进行的系统审查。相关文献是通过详尽的数据库搜索来确定的,并且有关数据收集,数据预处理和DL体系结构的实验协议,对论文进行了审查。该综述显示,在这一新的研究领域的研究数量有限,并表明这些研究中报告的DL框架(即DNN,CNN和RNN)可以以93%的平均准确率对Cyber​​sickness进行分类。这篇综述提供了DL框架在基于EEG的Cyber​​sickness检测中应用趋势和问题的摘要,并提供了一些未来研究的指南。

Cybersickness is an unpleasant side effect of exposure to a virtual reality (VR) experience and refers to such physiological repercussions as nausea and dizziness triggered in response to VR exposure. Given the debilitating effect of cybersickness on the user experience in VR, academic interest in the automatic detection of cybersickness from physiological measurements has crested in recent years. Electroencephalography (EEG) has been extensively used to capture changes in electrical activity in the brain and to automatically classify cybersickness from brainwaves using a variety of machine learning algorithms. Recent advances in deep learning (DL) algorithms and increasing availability of computational resources for DL have paved the way for a new area of research into the application of DL frameworks to EEG-based detection of cybersickness. Accordingly, this review involved a systematic review of the peer-reviewed papers concerned with the application of DL frameworks to the classification of cybersickness from EEG signals. The relevant literature was identified through exhaustive database searches, and the papers were scrutinized with respect to experimental protocols for data collection, data preprocessing, and DL architectures. The review revealed a limited number of studies in this nascent area of research and showed that the DL frameworks reported in these studies (i.e., DNN, CNN, and RNN) could classify cybersickness with an average accuracy rate of 93%. This review provides a summary of the trends and issues in the application of DL frameworks to the EEG-based detection of cybersickness, with some guidelines for future research.

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