机器人奥林匹克:估计和影响关于机器人感知能力的信念

Matthew Rueben, Eitan Rothberg, Matthew Tang, Sarah Inzerillo, Saurabh Kshirsagar, Maansi Manchanda, Ginger Dudley, Marlena R. Fraune, M. Matarić
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引用次数: 0

摘要

人们对机器人的认知往往不准确。当对机器人的感知能力产生这样的误解时,它们可能会导致安全、隐私和交互效率方面的问题。这项工作是第一次尝试模拟用户对机器人感知能力的看法,并制定计划来提高它们的准确性。,进行信念修复。我们设计了一个名为“机器人奥林匹克”的新领域,将其实现为一个基于web的游戏平台,用于收集有关用户信念的数据,并开发了一种方法来估计和影响用户对该领域虚拟机器人的信念。然后我们进行了一项研究,收集了240名玩游戏的在线参与者的用户行为和信念数据。结果显示,在模拟参与者对机器人动作的解释以及他们自己行为背后的决策过程方面存在缺陷。这项工作的见解为设计进一步的研究和改进用户模型提供了建议,以支持人机交互中的信念修复。
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The Robot Olympics: Estimating and Influencing Beliefs About a Robot’s Perceptual Capabilities
People often hold inaccurate mental models of robots. When such misconceptions regard a robot’s perceptual capabilities, they can lead to issues with safety, privacy, and interaction efficiency. This work is the first attempt to model users’ beliefs about a robot’s perceptual capabilities and make plans to improve their accuracy—i.e., to perform belief repair. We designed a new domain called the Robot Olympics, implemented it as a web-based game platform for collecting data about users’ beliefs, and developed an approach to estimating and influencing users’ beliefs about a virtual robot in that domain. We then conducted a study that collected user behavior and belief data from 240 online participants who played the game. Results revealed shortcomings in modeling the participant’s interpretations of the robot’s actions, as well as the decision making process behind their own actions. The insights from this work provide recommendations for designing further studies and improving user models to support belief repair in human-robot interaction.
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