Decision-theoretic planning under uncertainty for multimodal human-robot interaction

João A. Garcia, P. Lima, Tiago Veiga
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Abstract

This paper proposes a Decision-Theoretic approach to problems involving interaction between robot systems and human users, which takes into account the latent aspects of Human-Robot interaction, e.g., the user's status. The presented approach is based on the Partially Observable Markov Decision Process framework, which handles uncertainty in planning problems, extended with information rewards to optimize the information-gathering capabilities of the system. The approach is formalized into a framework which considers: observable and latent state variables; gesture and speech observations; and action factors which are related to the agent's actuators or to the information gain goals (Information-Reward actions). Under the proposed framework, the robot system is able to: actively gain information and react according to latent states, inherent to Human-Robot interaction settings; effectively achieve the goals of the task in which the robot is employed; and follow a socially appealing behavior. Finally, the framework was thoroughly tested in a socially assistive scenario, in a realistic apartment testbed and resorting to an autonomous mobile social robot. The experiments' results validate the proposed approach for problems involving robot systems in HumanRobot interaction scenarios.
多模态人机交互不确定条件下的决策规划
本文提出了一种决策理论方法来解决涉及机器人系统与人类用户交互的问题,该方法考虑了人机交互的潜在方面,例如用户的状态。该方法基于部分可观察马尔可夫决策过程框架,该框架处理规划问题中的不确定性,并扩展了信息奖励以优化系统的信息收集能力。该方法被形式化为一个框架,该框架考虑:可观察和潜在状态变量;手势和言语观察;以及与代理的执行器或与信息获取目标(信息奖励行为)相关的行为因素。在提出的框架下,机器人系统能够:主动获取信息并根据人机交互设置固有的潜在状态做出反应;有效地完成所使用机器人的任务目标;遵循一种具有社会吸引力的行为。最后,该框架在社交辅助场景、现实公寓测试平台和自主移动社交机器人中进行了全面测试。实验结果验证了提出的方法在人机交互场景中涉及机器人系统的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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