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Semantic-based interaction for teaching robot behavior compositions

机译:教学机器人行为组成的语义互动

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Allowing humans to teach robot behaviors will facilitate acceptability as well as long-term interactions. Humans would mainly use speech to transfer knowledge or to teach highlevel behaviors. In this paper, we propose a proof-of-concept application allowing a Pepper robot to learn behaviors from their natural-language-based description, provided by naive human users. In our model, natural language input is provided by grammar-free speech recognition, and is then processed to produce semantic knowledge, grounded in language and primitive behaviors. The same semantic knowledge is used to represent any kind of perceived input as well as actions the robot can perform. The experiment shows that the system can work independently from the domain of application, but also that it has limitations. Progress in semantic extraction, behavior planning and interaction scenario could stretch these limits.
机译:允许人类教授机器人行为将促进可接受性以及长期互动。人类将主要使用讲话来转移知识或教授高速行为。在本文中,我们提出了一个概念证据应用程序,允许辣椒机器人从天真的人类用户提供的基于自然语言的描述中学习行为。在我们的模型中,自然语言输入由语法语音识别提供,然后被处理以产生语义知识,以语言和原始行为为基础。使用相同的语义知识用于表示任何类型的感知输入以及机器人可以执行的动作。实验表明,该系统可以独立于应用领域独立工作,但也可以局限性地工作。语义提取的进展,行为规划和交互情景可以延伸这些限制。

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