一种基于触觉刺激的训练方法提高VR中运动图像脑电信号的质量

Shiwei Cheng, Jieming Tian
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摘要

随着脑机接口(BCI)技术和虚拟现实(VR)技术的出现,如何提高运动图像(MI)脑电图(EEG)信号的质量成为VR下MI脑机接口应用的关键问题。本文提出通过触觉刺激训练来提高心梗脑电信号的质量。我们设计了VR下的第一人称视角和第三人称视角场景,实验结果表明,与训练前相比,参与者的左、右手MI脑电质量得到了显著提高,左、右手MI任务的平均分化能力分别提高了21.8%和15.7%。我们在VR中实现了BCI应用系统,并开发了一款基于MI EEG的球运动控制游戏,参与者在第一人称视角下训练后的平均分类准确率达到93.5%,较已有研究有明显提高。
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A Haptic Stimulation-Based Training Method to Improve the Quality of Motor Imagery EEG Signal in VR
With the emergence of brain-computer interface (BCI) technology and virtual reality (VR), how to improve the quality of motor imagery (MI) electroencephalogram (EEG) signal has become a key issue for MI BCI applications under VR. In this paper, we proposed to enhance the quality of MI EEG signal by using haptic stimulation training. We designed a first-person perspective and a third-person perspective scene under VR, and the experimental results showed that the left- and right-hand MI EEG quality of the participants improved significantly compared with that before training, and the mean differentiation of the left- and right-hand MI tasks was improved by 21.8% and 15.7%, respectively. We implemented a BCI application system in VR and developed a game based on MI EEG for control of ball movement, in which the average classification accuracy by the participants after training in the first-person perspective reached 93.5%, which was a significant improvement over existing study.
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