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基于 SSVEP 的脑-机接口的 EEG 控制壁面爬行清洁机器人。

EEG-Controlled Wall-Crawling Cleaning Robot Using SSVEP-Based Brain-Computer Interface.

机构信息

Key Laboratory for Control Theory & Applications in Complicated Systems, Tianjin University of Technology, Tianjin 300384, China.

Department of Computer and Network Engineering, College of Information Technology, United Arab Emirates University, Al Ain, P.O. Box 15551, UAE.

出版信息

J Healthc Eng. 2020 Jan 11;2020:6968713. doi: 10.1155/2020/6968713. eCollection 2020.

Abstract

The assistive, adaptive, and rehabilitative applications of EEG-based robot control and navigation are undergoing a major transformation in dimension as well as scope. Under the background of artificial intelligence, medical and nonmedical robots have rapidly developed and have gradually been applied to enhance the quality of people's lives. We focus on connecting the brain with a mobile home robot by translating brain signals to computer commands to build a brain-computer interface that may offer the promise of greatly enhancing the quality of life of disabled and able-bodied people by considerably improving their autonomy, mobility, and abilities. Several types of robots have been controlled using BCI systems to complete real-time simple and/or complicated tasks with high performances. In this paper, a new EEG-based intelligent teleoperation system was designed for a mobile wall-crawling cleaning robot. This robot uses crawler type instead of the traditional wheel type to be used for window or floor cleaning. For EEG-based system controlling the robot position to climb the wall and complete the tasks of cleaning, we extracted steady state visually evoked potential (SSVEP) from the collected electroencephalography (EEG) signal. The visual stimulation interface in the proposed SSVEP-based BCI was composed of four flicker pieces with different frequencies (e.g., 6 Hz, 7.5 Hz, 8.57 Hz, and 10 Hz). Seven subjects were able to smoothly control the movement directions of the cleaning robot by looking at the corresponding flicker using their brain activity. To solve the multiclass problem, thereby achieving the purpose of cleaning the wall within a short period, the canonical correlation analysis (CCA) classification algorithm had been used. Offline and online experiments were held to analyze/classify EEG signals and use them as real-time commands. The proposed system was efficient in the classification and control phases with an obtained accuracy of 89.92% and had an efficient response speed and timing with a bit rate of 22.23 bits/min. These results suggested that the proposed EEG-based clean robot system is promising for smart home control in terms of completing the tasks of cleaning the walls with efficiency, safety, and robustness.

摘要

基于脑电图的机器人控制和导航的辅助、适应和康复应用正在维度和范围上发生重大转变。在人工智能的背景下,医疗和非医疗机器人迅速发展,并逐渐应用于提高人们的生活质量。我们专注于通过将大脑信号转换为计算机命令来连接大脑和移动家庭机器人,构建脑机接口,通过显著提高残疾人和健全人的自主性、移动性和能力,从而有可能极大地提高他们的生活质量。已经使用 BCI 系统控制了几种类型的机器人来完成具有高性能的实时简单和/或复杂任务。在本文中,我们设计了一种新的基于脑电图的智能遥操作系统,用于移动壁面爬行清洁机器人。该机器人使用履带式而不是传统的轮式,用于窗户或地板清洁。为了实现基于脑电图的系统控制机器人位置爬墙并完成清洁任务,我们从采集的脑电图(EEG)信号中提取了稳态视觉诱发电位(SSVEP)。所提出的基于 SSVEP 的 BCI 的视觉刺激界面由四个具有不同频率的闪烁块组成(例如,6 Hz、7.5 Hz、8.57 Hz 和 10 Hz)。七名受试者能够通过大脑活动观察相应的闪烁来平稳地控制清洁机器人的运动方向。为了解决多类问题,从而在短时间内达到清洁墙壁的目的,使用典型相关分析(CCA)分类算法。进行了离线和在线实验,以分析/分类脑电图信号并将其用作实时命令。该系统在分类和控制阶段效率很高,准确率为 89.92%,具有高效的响应速度和定时,比特率为 22.23 位/分钟。这些结果表明,所提出的基于脑电图的清洁机器人系统在高效、安全和稳健地完成墙壁清洁任务方面具有很大的应用前景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/17c8/7201509/2aa05b59a3ba/JHE2020-6968713.001.jpg

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