利用多感官虚拟现实启动增强运动图像检测效果

Reza Amini Gougeh, T. Falk
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引用次数: 1

摘要

脑机接口(BCI)已经被开发出来,通过将大脑活动转化为控制信号,使用户能够与外部世界进行交流。运动意象(MI)在脑机接口控制中一直是一种流行的范例,其中用户想象他们的左右肢体的运动,然后训练分类器直接从脑电图(EEG)信号中检测这种意图。然而,对于一些用户来说,很难从EEG信号中提取出可以用现有特征和分类器检测到的模式。因此,新的用户控制策略和训练范例一直备受追捧,以帮助提高运动图像的性能。虚拟现实(VR)已经成为一种潜在的工具,用户参与度和沉浸度的提高已经证明可以提高脑机接口的准确性。反过来,VR中的运动启动已被证明可以进一步提高脑机接口的准确性。在这项试点研究中,我们首先探索在触觉和嗅觉刺激存在的情况下,多感官VR运动启动是否可以在提高准确性和更快的检测速度方面提高运动图像检测效率。10名参与者配备了嵌入式生物传感器的VR头显、现成的气味扩散装置和带力反馈的触觉手套,实验表明,运动图像检测可以得到显著改善。还观察到使用的六种常见空间模式滤波器的活性增加,并且可以通过缩短2秒的分析窗口实现峰值精度。综上所述,多感觉运动启动先于运动意象可以提高检测效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing motor imagery detection efficacy using multisensory virtual reality priming
Brain-computer interfaces (BCI) have been developed to allow users to communicate with the external world by translating brain activity into control signals. Motor imagery (MI) has been a popular paradigm in BCI control where the user imagines movements of e.g., their left and right limbs and classifiers are then trained to detect such intent directly from electroencephalography (EEG) signals. For some users, however, it is difficult to elicit patterns in the EEG signal that can be detected with existing features and classifiers. As such, new user control strategies and training paradigms have been highly sought-after to help improve motor imagery performance. Virtual reality (VR) has emerged as one potential tool where improvements in user engagement and level of immersion have shown to improve BCI accuracy. Motor priming in VR, in turn, has shown to further enhance BCI accuracy. In this pilot study, we take the first steps to explore if multisensory VR motor priming, where haptic and olfactory stimuli are present, can improve motor imagery detection efficacy in terms of both improved accuracy and faster detection. Experiments with 10 participants equipped with a biosensor-embedded VR headset, an off-the-shelf scent diffusion device, and a haptic glove with force feedback showed that significant improvements in motor imagery detection could be achieved. Increased activity in the six common spatial pattern filters used were also observed and peak accuracy could be achieved with analysis windows that were 2 s shorter. Combined, the results suggest that multisensory motor priming prior to motor imagery could improve detection efficacy.
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