Center for SCDM, School of Media and Law, NingboTech University, Ningbo 315100, China.
Comput Intell Neurosci. 2022 Jun 8;2022:1635672. doi: 10.1155/2022/1635672. eCollection 2022.
The purpose of this study is to explore the noninvasive human-computer interaction methods that have been widely used in various fields, especially in the field of robot control. To have a deep understanding of the development of the methods, this paper employs "Mapping Knowledge Domains" (MKDs) to find research hotspots in the area to show the future potential development. Through the literature review, this paper found that there was a paradigm shift in the research of noninvasive BCI technologies for robotic control, which has occurred from early 2010 since the rapid development of machine learning, deep learning, and sensory technologies. This study further provides a trend analysis that the combination of data-driven methods with optimized algorithms and human-sensory-driven methods will be the key areas for the future noninvasive method development in robotic control. Based on the above findings, the paper provides a potential developing way of noninvasive HCI methods for related areas including health care, robotic system, and media.
本研究旨在探讨已广泛应用于各个领域、特别是机器人控制领域的非侵入式人机交互方法。为深入了解这些方法的发展情况,本文采用“知识图谱”(Mapping Knowledge Domains,MKDs)方法,找出该领域的研究热点,以展示未来的潜在发展方向。通过文献回顾,本文发现,自 2010 年初以来,随着机器学习、深度学习和传感技术的快速发展,用于机器人控制的非侵入式脑机接口技术的研究发生了范式转变。本研究进一步提供了一项趋势分析,即数据驱动方法与优化算法以及人类感官驱动方法的结合,将是未来机器人控制中非侵入式方法发展的关键领域。基于上述发现,本文为包括医疗保健、机器人系统和媒体在内的相关领域提供了一种非侵入式人机交互方法的潜在发展途径。