基于cvt的异步脑机接口脑控机器人导航。

IF 10.5 Q1 ENGINEERING, BIOMEDICAL
Mengfan Li, Ran Wei, Ziqi Zhang, Pengfei Zhang, Guizhi Xu, Wenzhe Liao
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引用次数: 1

摘要

脑机接口(BCI)是人类智能与机器人智能融合的一个典型方向。共享控制是人类和机器人代理在共同任务中结合的基本形式,但仍然面临着人类代理缺乏自由的问题。提出了一种基于质心Voronoi细分(CVT)的异步脑机接口(BCI)脑控机器人导航道路分割方法。在脑机接口系统中引入了基于肌电图的异步机制,实现了自定速控制。提出了一种新的基于cvt的道路分割方法,在道路区域内生成可选导航目标,实现目标的任意选择。脑机接口的事件相关电位设计用于目标选择,并与机器人进行通信。机器人具有自主导航功能,可以达到人类选择的目标。通过单步控制模式下的对比实验,验证了基于CVT-A的异步BCI系统的有效性。8名受试者参加了实验,他们被指示控制机器人,让机器人向一个目的地导航,并完成避障任务。结果表明,与单步模式相比,CVT-A BCI系统可以缩短任务时间,减少指令次数,优化导航路径。此外,CVT-A BCI系统的这种共享控制机制有助于促进非结构化环境中人与机器人智能体的集成控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

CVT-Based Asynchronous BCI for Brain-Controlled Robot Navigation.

CVT-Based Asynchronous BCI for Brain-Controlled Robot Navigation.

CVT-Based Asynchronous BCI for Brain-Controlled Robot Navigation.

CVT-Based Asynchronous BCI for Brain-Controlled Robot Navigation.

Brain-computer interface (BCI) is a typical direction of integration of human intelligence and robot intelligence. Shared control is an essential form of combining human and robot agents in a common task, but still faces a lack of freedom for the human agent. This paper proposes a Centroidal Voronoi Tessellation (CVT)-based road segmentation approach for brain-controlled robot navigation by means of asynchronous BCI. An electromyogram-based asynchronous mechanism is introduced into the BCI system for self-paced control. A novel CVT-based road segmentation method is provided to generate optional navigation goals in the road area for arbitrary goal selection. An event-related potential of the BCI is designed for target selection to communicate with the robot. The robot has an autonomous navigation function to reach the human selected goals. A comparison experiment in the single-step control pattern is executed to verify the effectiveness of the CVT-based asynchronous (CVT-A) BCI system. Eight subjects participated in the experiment, and they were instructed to control the robot to navigate toward a destination with obstacle avoidance tasks. The results show that the CVT-A BCI system can shorten the task duration, decrease the command times, and optimize navigation path, compared with the single-step pattern. Moreover, this shared control mechanism of the CVT-A BCI system contributes to the promotion of human and robot agent integration control in unstructured environments.

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CiteScore
7.70
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