共享自治中的人机相互适应。

Stefanos Nikolaidis, David Hsu, Yu Xiang Zhu, Siddhartha Srinivasa
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引用次数: 105

摘要

共享自治将用户输入与机器人自治相结合,以控制机器人并帮助用户完成任务。我们的工作旨在提高这样一个人-机器人团队的表现:机器人试图引导人类采取有效的策略,有时违背人类自己的偏好,同时仍然保持他的信任。我们通过一个有原则的人-机器人相互适应的形式体系来实现这一点。我们将人类的有限记忆适应模型整合到部分可观察的随机决策模型中,使机器人能够适应适应性强的人类。当人类具有适应能力时,机器人会引导人类走向一个好的策略,可能是人类事先不知道的。当人类顽固、不适应时,机器人会遵从人类的偏好,以保持人类的信任。在共享自治设置中,与许多其他常见的人机协作设置不同,只有机器人的动作可以改变世界的物理状态,而人类和机器人的目标是无法完全观察到的。我们解决了这些挑战,并在人类受试者实验中表明,与让机器人严格遵循参与者偏好的常见方法相比,所提出的相互适应形式主义提高了人-机器人团队的绩效,同时保持了用户对机器人的高度信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Human-Robot Mutual Adaptation in Shared Autonomy.

Human-Robot Mutual Adaptation in Shared Autonomy.

Human-Robot Mutual Adaptation in Shared Autonomy.

Human-Robot Mutual Adaptation in Shared Autonomy.

Shared autonomy integrates user input with robot autonomy in order to control a robot and help the user to complete a task. Our work aims to improve the performance of such a human-robot team: the robot tries to guide the human towards an effective strategy, sometimes against the human's own preference, while still retaining his trust. We achieve this through a principled human-robot mutual adaptation formalism. We integrate a bounded-memory adaptation model of the human into a partially observable stochastic decision model, which enables the robot to adapt to an adaptable human. When the human is adaptable, the robot guides the human towards a good strategy, maybe unknown to the human in advance. When the human is stubborn and not adaptable, the robot complies with the human's preference in order to retain their trust. In the shared autonomy setting, unlike many other common human-robot collaboration settings, only the robot actions can change the physical state of the world, and the human and robot goals are not fully observable. We address these challenges and show in a human subject experiment that the proposed mutual adaptation formalism improves human-robot team performance, while retaining a high level of user trust in the robot, compared to the common approach of having the robot strictly following participants' preference.

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