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单通道非侵入式可穿戴脑机接口在工业和医疗保健领域的应用

A Single-Channel and Non-Invasive Wearable Brain-Computer Interface for Industry and Healthcare.

机构信息

Department of Electrical Engineering and Information Technology (DIETI), University of Naples Federico II; Interdepartmental Center for Research and Innovation in Management and Healthcare (CIRMIS), University of Naples Federico II;

Department of Electrical Engineering and Information Technology (DIETI), University of Naples Federico II; Advanced Metrological Services Center (CeSMA), University of Naples Federico II.

出版信息

J Vis Exp. 2023 Jul 7(197). doi: 10.3791/65007.

Abstract

The present work focuses on how to build a wearable brain-computer interface (BCI). BCIs are a novel means of human-computer interaction that relies on direct measurements of brain signals to assist both people with disabilities and those who are able-bodied. Application examples include robotic control, industrial inspection, and neurorehabilitation. Notably, recent studies have shown that steady-state visually evoked potentials (SSVEPs) are particularly suited for communication and control applications, and efforts are currently being made to bring BCI technology into daily life. To achieve this aim, the final system must rely on wearable, portable, and low-cost instrumentation. In exploiting SSVEPs, a flickering visual stimulus with fixed frequencies is required. Thus, in considering daily-life constraints, the possibility to provide visual stimuli by means of smart glasses was explored in this study. Moreover, to detect the elicited potentials, a commercial device for electroencephalography (EEG) was considered. This consists of a single differential channel with dry electrodes (no conductive gel), thus achieving the utmost wearability and portability. In such a BCI, the user can interact with the smart glasses by merely staring at icons appearing on the display. Upon this simple principle, a user-friendly, low-cost BCI was built by integrating extended reality (XR) glasses with a commercially available EEG device. The functionality of this wearable XR-BCI was examined with an experimental campaign involving 20 subjects. The classification accuracy was between 80%-95% on average depending on the stimulation time. Given these results, the system can be used as a human-machine interface for industrial inspection but also for rehabilitation in ADHD and autism.

摘要

本工作重点研究如何构建可穿戴脑机接口(BCI)。BCI 是一种新颖的人机交互方式,它依赖于大脑信号的直接测量,可辅助残疾人和健全人。应用实例包括机器人控制、工业检测和神经康复。值得注意的是,最近的研究表明,稳态视觉诱发电位(SSVEP)特别适合通信和控制应用,目前正在努力将 BCI 技术引入日常生活。为了实现这一目标,最终系统必须依赖于可穿戴、便携式和低成本的仪器。在利用 SSVEP 时,需要使用具有固定频率的闪烁视觉刺激。因此,在考虑日常生活的限制时,本研究探讨了通过智能眼镜提供视觉刺激的可能性。此外,为了检测诱发的电位,使用了一种商用脑电图(EEG)设备。它由单个带有干电极的差分通道组成(无导电凝胶),从而实现了最佳的可穿戴性和便携性。在这种 BCI 中,用户只需盯着显示器上出现的图标即可与智能眼镜进行交互。在此简单原理的基础上,通过将扩展现实(XR)眼镜与商用 EEG 设备集成,构建了一种用户友好、低成本的 BCI。通过涉及 20 名受试者的实验活动,对这种可穿戴 XR-BCI 的功能进行了检验。平均而言,分类准确率在 80%-95%之间,具体取决于刺激时间。鉴于这些结果,该系统可用于工业检测的人机界面,也可用于 ADHD 和自闭症的康复。

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