Robot learning simultaneously a task and how to interpret human instructions

Jonathan Grizou, M. Lopes, Pierre-Yves Oudeyer
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引用次数: 45

Abstract

This paper presents an algorithm to bootstrap shared understanding in a human-robot interaction scenario where the user teaches a robot a new task using teaching instructions yet unknown to it. In such cases, the robot needs to estimate simultaneously what the task is and the associated meaning of instructions received from the user. For this work, we consider a scenario where a human teacher uses initially unknown spoken words, whose associated unknown meaning is either a feedback (good/bad) or a guidance (go left, right, ...). We present computational results, within an inverse reinforcement learning framework, showing that a) it is possible to learn the meaning of unknown and noisy teaching instructions, as well as a new task at the same time, b) it is possible to reuse the acquired knowledge about instructions for learning new tasks, and c) even if the robot initially knows some of the instructions' meanings, the use of extra unknown teaching instructions improves learning efficiency.
机器人可以同时学习一项任务和如何理解人类的指令
本文提出了一种在人机交互场景中引导共享理解的算法,在这种场景中,用户使用未知的教学指令教机器人完成新任务。在这种情况下,机器人需要同时估计任务是什么以及从用户那里收到的指令的相关含义。在这项工作中,我们考虑一个场景,一个人类老师使用最初未知的口语单词,其相关的未知含义要么是反馈(好/坏),要么是指导(向左,向右,……)。我们给出了在逆强化学习框架内的计算结果,表明a)可以同时学习未知和噪声教学指令的含义以及新任务,b)可以重用获得的关于指令的知识来学习新任务,以及c)即使机器人最初知道一些指令的含义,使用额外的未知教学指令也可以提高学习效率。
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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