人类对机器人的信任:信任模型及其控制/机器人应用调查

Yue Wang;Fangjian Li;Huanfei Zheng;Longsheng Jiang;Maziar Fooladi Mahani;Zhanrui Liao
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引用次数: 0

摘要

信任模型是一个首先在组织研究中引起人们兴趣的话题,随后在自动化领域的人为因素中也引起了人们的兴趣。由于近年来人机交互(HRI)和人机协作的进步,人类对机器人的信任越来越受到研究人员和从业人员的关注。本文重点探讨人机信任的计算模型及其在机器人学和机器人控制中的应用。其目的是概述量化信任的最新计算方法,以便在人机交互中提供反馈和态势感知。与其他现有的关于人机信任模型的调查论文不同,我们力求深入介绍信任模型的分类、制定和分析,重点关注其在机器人学和机器人控制中的应用。本文首先讨论了人类-机器人信任与一般代理-代理信任、人际信任以及人类对自动化和机器的信任之间的区别。本文总结了人与机器人信任的影响因素、不同的信任测量方法及其相应的尺度。然后,我们回顾了现有的计算型人机信任模型,并讨论了各类模型的优缺点。这些模型包括以性能为中心的代数模型、时间序列模型、基于马尔可夫决策过程(MDP)/部分可观测 MDP(POMDP)的模型、基于高斯模型和基于动态贝叶斯网络(DBN)的信任模型。在对每种计算型人机信任模型进行总结后,我们将考察其在机器人控制应用中的使用情况(如果有的话)。我们还列举了这一领域的主要局限性和未决问题,并讨论了潜在的未来研究方向。
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Human Trust in Robots: A Survey on Trust Models and Their Controls/Robotics Applications
Trust model is a topic that first gained interest in organizational studies and then human factors in automation. Thanks to recent advances in human-robot interaction (HRI) and human-autonomy teaming, human trust in robots has gained growing interest among researchers and practitioners. This article focuses on a survey of computational models of human-robot trust and their applications in robotics and robot controls. The motivation is to provide an overview of the state-of-the-art computational methods to quantify trust so as to provide feedback and situational awareness in HRI. Different from other existing survey papers on human-robot trust models, we seek to provide in-depth coverage of the trust model categorization, formulation, and analysis, with a focus on their utilization in robotics and robot controls. The paper starts with a discussion of the difference between human-robot trust with general agent-agent trust, interpersonal trust, and human trust in automation and machines. A list of impacting factors for human-robot trust and different trust measurement approaches, and their corresponding scales are summarized. We then review existing computational human-robot trust models and discuss the pros and cons of each category of models. These include performance-centric algebraic, time-series, Markov decision process (MDP)/Partially Observable MDP (POMDP)-based, Gaussian-based, and dynamic Bayesian network (DBN)-based trust models. Following the summary of each computational human-robot trust model, we examine its utilization in robot control applications, if any. We also enumerate the main limitations and open questions in this field and discuss potential future research directions.
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