Human-Robot Interaction in an Unknown Human Intention Scenario

M. Awais, D. Henrich
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引用次数: 30

Abstract

In this paper an approach is introduced to human robot interaction in a known scenario with unknown human intentions. Initially, the robot reacts by copying the human action. As the human-robot interaction proceeds, the level of human-robot interaction improves. Before each reaction, the robot hypothesizes its potential actions and selects one that is found most suitable. The robot may also use the human-robot interaction history. Along with the history, the robot also considers the action randomness and heuristic based action predictions. As solution, a general reinforcement Learning (RL) based algorithm is proposed that suggests learning of human robot interaction in an unknown human intention scenario. A Particle Filter (PF) based algorithm is proposed to support the probabilistic action selection for human-robot interaction. The experiments for human-robot interaction are performed by a robotic arm involving the arrangement of known objects with unknown human intention. The task of the robot is to interact with the human according to the estimated human intention.
未知人类意图情景下的人机交互
本文介绍了一种在未知人为意图的已知场景下进行人机交互的方法。最初,机器人的反应是模仿人类的动作。随着人机交互的深入,人机交互的水平也在不断提高。在每次反应之前,机器人都会对其可能的动作进行假设,并选择最合适的动作。机器人也可以使用人机交互历史。随着历史的发展,机器人还考虑了动作随机性和基于启发式的动作预测。作为解决方案,提出了一种基于通用强化学习(RL)的算法,该算法建议在未知的人类意图场景下学习人机交互。提出了一种基于粒子滤波的人机交互概率动作选择算法。人机交互实验是通过机械臂进行的,涉及未知人类意图的已知物体的排列。机器人的任务是根据估计的人的意图与人进行交互。
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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