视觉界面新趋势下的生物信号集成机器人系统:系统综述。

IF 2.9 Q2 BIOPHYSICS
Biophysics reviews Pub Date : 2024-02-21 eCollection Date: 2024-03-01 DOI:10.1063/5.0185568
Jaeho Lee, Sina Miri, Allison Bayro, Myunghee Kim, Heejin Jeong, Woon-Hong Yeo
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引用次数: 0

摘要

人机界面(HMI)目前是一个时髦且正在迅速扩展的研究领域。有趣的是,人类用户并不容易观察到人机界面。相反,机器与来自用户身体的电信号之间的互动被复杂的控制算法所掩盖。这实际上是一条单行道,数据只从人类传送到机器。因此,文献中仍然存在一个空白:如何才能有效地向用户传递信息,从而实现人机之间的相互理解?本文回顾了集成生物信号的可穿戴机器人技术的最新进展,特别强调了 "可视化"--向用户展示相关数据、统计资料和视觉反馈。这篇综述文章涵盖了脑电图和肌电图等各种相关信号,并探讨了新型传感器架构和关键材料。文章从控制和机械设计的角度探讨了可穿戴机器人技术的最新发展。此外,我们还讨论了当前的可视化方法,并概述了该领域的未来发展方向。虽然人机界面领域的大部分内容都集中在生物医学和医疗保健应用上,例如脊髓损伤和中风患者的康复,但本文也涵盖了制造业、国防和其他领域中较少见的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biosignal-integrated robotic systems with emerging trends in visual interfaces: A systematic review.

Human-machine interfaces (HMI) are currently a trendy and rapidly expanding area of research. Interestingly, the human user does not readily observe the interface between humans and machines. Instead, interactions between the machine and electrical signals from the user's body are obscured by complex control algorithms. The result is effectively a one-way street, wherein data is only transmitted from human to machine. Thus, a gap remains in the literature: how can information be effectively conveyed to the user to enable mutual understanding between humans and machines? Here, this paper reviews recent advancements in biosignal-integrated wearable robotics, with a particular emphasis on "visualization"-the presentation of relevant data, statistics, and visual feedback to the user. This review article covers various signals of interest, such as electroencephalograms and electromyograms, and explores novel sensor architectures and key materials. Recent developments in wearable robotics are examined from control and mechanical design perspectives. Additionally, we discuss current visualization methods and outline the field's future direction. While much of the HMI field focuses on biomedical and healthcare applications, such as rehabilitation of spinal cord injury and stroke patients, this paper also covers less common applications in manufacturing, defense, and other domains.

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CiteScore
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