ACTIVE INTENTION INFERENCE FOR ROBOT-HUMAN COLLABORATION

Hsien-I Lin, Xuan-Anh Nguyen, Wei-Kai Chen
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引用次数: 3

Abstract

Understanding human intention is an important ability for an intelligent robot to collaborate with a human to accomplish various tasks. During collaboration, a robot with such ability can predict the successive actions that a human partner intends to perform, provide necessary assistance and support, and remind for the missing and failure actions from the human to achieve a desired task purpose. This paper presents a framework that allows a robot to automatically recognize and infer the action intention of a human partner based on visualization, in which an inverse-reinforcement learning (IRL) system is learnt based on the observed human demonstration and used to infer the human successive actions. Compared to other systems based on reinforcement learning, the reward of a Markov-Decision process (MDP) is directly learned from the demonstration. In our experiment, we provide some examples of the proposed framework which yields promising results with coffee-making and pick-and-place tasks. Regarding to the human-intention model based on IRL, the coffee-making experiment indicates that the action is globally predicted because the action of putting down the water pot is selected instead of pouring water when the cup is already filled with water.
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面向人机协作的主动意图推理
理解人类的意图是智能机器人与人类合作完成各种任务的重要能力。在协作过程中,具有这种能力的机器人可以预测人类伙伴将要执行的后续动作,提供必要的帮助和支持,并提醒人类的缺失和失败动作,以达到预期的任务目的。本文提出了一种基于可视化的机器人自动识别和推断人类同伴的动作意图的框架,其中基于观察到的人类演示学习逆强化学习(IRL)系统,并用于推断人类的连续动作。与其他基于强化学习的系统相比,马尔可夫决策过程(MDP)的奖励直接从演示中学习。在我们的实验中,我们提供了一些所提出的框架的例子,这些框架在制作咖啡和拾取放置任务中产生了有希望的结果。对于基于IRL的人类意图模型,冲咖啡实验表明,该动作是全局预测的,因为在杯子已经装满水的情况下,选择了放下水壶的动作而不是倒水的动作。
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