Human awareness based robot performance learning in a social environment

Ju-Hsuan Hua, Shaopeng Ma, L. Fu
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引用次数: 5

Abstract

In this paper, we develop a human awareness Decision Network model for robot performance on decision making. To accomplish more natural and intelligent human robot interaction (HRI), a robot should not only be able to infer the user's intention through recognizing the actions, but also to perform appropriate decisions and to learn from the user's feedback. In traditional approaches, user intention inference and feedback learning are dealt with separately. In this paper, we propose an integrated strategy of human-oriented perception, user modeling and user sensitivity in a social environment. The robot can analyze a user's feedback to adjust its decisions as the user expects through the strategy. The experimental results show the effectiveness of the proposed approach that enables autonomous adaptation of robot's decision to the user desires. Also, we demonstrate a satisfactory performance in terms of successful inference of human intentions, as well as adequacy of the decisions made by the robot for meeting user expectation.
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社会环境下基于人类意识的机器人性能学习
在本文中,我们开发了一个用于机器人决策性能的人类感知决策网络模型。为了实现更自然、更智能的人机交互(HRI),机器人不仅要能够通过识别用户的动作推断出用户的意图,还要能够做出适当的决策,并从用户的反馈中学习。在传统的方法中,用户意图推理和反馈学习是分开处理的。在本文中,我们提出了一种在社会环境中以人为本的感知、用户建模和用户敏感性的集成策略。机器人可以分析用户的反馈,根据用户的期望通过策略调整决策。实验结果表明了该方法的有效性,使机器人的决策能够自主适应用户的需求。此外,我们在成功推断人类意图方面展示了令人满意的性能,以及机器人为满足用户期望而做出的决策的充分性。
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