Zhang Yifei, Doyle Thomas
Department of Electrical and Computer Engineering, McMaster University, Hamilton, ON, Canada.
School of Biomedical Engineering, McMaster University, Hamilton, ON, Canada.
Front Robot AI. 2023 Oct 9;10:1233328. doi: 10.3389/frobt.2023.1233328. eCollection 2023.
The increasing adoption of robot systems in industrial settings and teaming with humans have led to a growing interest in human-robot interaction (HRI) research. While many robots use sensors to avoid harming humans, they cannot elaborate on human actions or intentions, making them passive reactors rather than interactive collaborators. Intention-based systems can determine human motives and predict future movements, but their closer interaction with humans raises concerns about trust. This scoping review provides an overview of sensors, algorithms, and examines the trust aspect of intention-based systems in HRI scenarios. We searched MEDLINE, Embase, and IEEE Xplore databases to identify studies related to the forementioned topics of intention-based systems in HRI. Results from each study were summarized and categorized according to different intention types, representing various designs. The literature shows a range of sensors and algorithms used to identify intentions, each with their own advantages and disadvantages in different scenarios. However, trust of intention-based systems is not well studied. Although some research in AI and robotics can be applied to intention-based systems, their unique characteristics warrant further study to maximize collaboration performance. This review highlights the need for more research on the trust aspects of intention-based systems to better understand and optimize their role in human-robot interactions, at the same time establishes a foundation for future research in sensor and algorithm designs for intention-based systems.
机器人系统在工业环境中的日益普及以及与人类的协作,引发了人们对人机交互(HRI)研究的兴趣日益浓厚。虽然许多机器人使用传感器来避免伤害人类,但它们无法详细说明人类的行为或意图,这使得它们成为被动的反应者而非交互式合作者。基于意图的系统可以确定人类的动机并预测未来的动作,但其与人类更紧密的交互引发了对信任的担忧。本综述概述了传感器、算法,并探讨了基于意图的系统在人机交互场景中的信任问题。我们检索了MEDLINE、Embase和IEEE Xplore数据库,以识别与基于意图的系统在人机交互中的上述主题相关的研究。根据不同的意图类型对每项研究的结果进行了总结和分类,这些意图类型代表了各种设计。文献表明,用于识别意图的传感器和算法多种多样,每种在不同场景中都有其自身的优缺点。然而,对基于意图的系统的信任研究不足。尽管人工智能和机器人技术的一些研究可以应用于基于意图的系统,但其独特的特性仍需要进一步研究,以最大限度地提高协作性能。本综述强调需要对基于意图的系统的信任方面进行更多研究,以更好地理解和优化它们在人机交互中的作用,同时为基于意图的系统的传感器和算法设计的未来研究奠定基础。