先进的老年服务机器人:环境感知、服从控制、意图识别和研究挑战

Xiaofeng Liu, Congyu Huang, Haoran Zhu, Ziyang Wang, Jie Li, Angelo Cangelosi
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引用次数: 0

摘要

本文概述了有关老年服务机器人的环境感知、遵从控制和意图识别的文献。人口老龄化是当今社会的必然趋势,因此对服务机器人的需求十分迫切。高性能协作机器人应能构建和谐有效的人机共生环境。环境感知是人机交互的基础,本研究首先概述了老年服务机器人的环境感知系统(如环境三维重建和物体定位)。此外,我们还报告了遵从控制中采用的各种学习方法,这为机器人的通用化开辟了道路。在这种情况下,我们将综述分为以学习过程为界限的三个主要领域。文章还介绍了与意图识别相关的多模态信号(如视觉、语音和肌电图)处理的几个方面。最后,我们简要讨论了机器人要达到与人类相媲美的交互性能需要克服的几个挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State-of-the-Art Elderly Service Robot: Environmental Perception, Compliance Control, Intention Recognition, and Research Challenges
This article surveys the literature on environmental perception, compliance control, and intention recognition for elderly service robots. Population aging is an inevitable trend in current society, leading to an urgent need for service robots. A high-performance collaborative robot should be able to construct an environment of harmonious and effective human–robot symbiosis. This survey starts with an overview of the environment perception system (e.g., environment 3D reconstruction and object location) for elderly service robots, as environment perception is the basis of human–robot interaction. Furthermore, we report various learning methods deployed in compliance control, which opens the way for the generalization of robots. In this case, we structure our review into three primary domains delimited by learning processes. The article also presents several aspects focusing on processing multimodal signals (e.g., vision, speech, and electromyograms) related to intention recognition. Finally, we briefly discuss several challenges that robots need to overcome to reach interactive performance comparable to humans.
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