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Unsupervised Online Grounding of Natural Language during Human-Robot Interactions

机译:在人机交互期间无监督的在线接地自然语言

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Allowing humans to communicate through natural language with robots requires connections between words and percepts. The process of creating these connections is called symbol grounding and has been studied for nearly three decades. Although many studies have been conducted, not many considered grounding of synonyms and the employed algorithms either work only offline or in a supervised manner. In this paper, a cross-situational learning based grounding framework is proposed that allows grounding of words and phrases through corresponding percepts without human supervision and online, i.e. it does not require any explicit training phase, but instead updates the obtained mappings for every new encountered situation. The proposed framework is evaluated through an interaction experiment between a human tutor and a robot, and compared to an existing unsupervised grounding framework. The results show that the proposed framework is able to ground words through their corresponding percepts online and in an unsupervised manner, while outperforming the baseline framework.
机译:允许人类通过机器人通过自然语言进行沟通需要单词和感知之间的连接。创建这些连接的过程称为符号接地,并已研究近三十年。虽然已经进行了许多研究,但没有许多被认为是同义词的接地,并且所采用的算法只能脱机或以监督方式工作。在本文中,提出了一种基于交叉情境学习的基础框架,允许通过没有人为监督和在线的相应感知来接地单词和短语,即它不需要任何明确的训练阶段,而是更新所获得的映射,以满足每一个新的遇到的映射情况。通过人导师和机器人之间的相互作用实验来评估所提出的框架,并与现有无监督的接地框架相比。结果表明,拟议的框架能够通过在线和无人监督的方式通过他们的相应感知来地进行地面,同时表现出基线框架。

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