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Jointly Improving Parsing and Perception for Natural Language Commands through Human-Robot Dialog

机译:通过人机对话框共同改善对自然语言命令的解析和感知

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In this work, we present methods for using human-robot dialog to improve language understanding for a mobile robot agent. The agent parses natural language to underlying semantic meanings and uses robotic sensors to create multi-modal models of perceptual concepts like red and heavy. The agent can be used for showing navigation routes, delivering objects to people, and relocating objects from one location to another. We use dialog clari_cation questions both to understand commands and to generate additional parsing training data. The agent employs opportunistic active learning to select questions about how words relate to objects, improving its understanding of perceptual concepts. We evaluated this agent on Amazon Mechanical Turk. After training on data induced from conversations, the agent reduced the number of dialog questions it asked while receiving higher usability ratings. Additionally, we demonstrated the agent on a robotic platform, where it learned new perceptual concepts on the y while completing a real-world task.
机译:在这项工作中,我们提供了使用人机机器人对话的方法来提高对移动机器人代理的语言理解。该代理将自然语言解析为潜在的语言含义,并使用机器人传感器来创建像红色和沉重的感知概念的多模态模型。代理可用于显示导航路由,将对象传递给人,并将对象从一个位置重新分解到另一个位置。我们使用对话框Clari_cation Quest来了解命令并生成其他解析培训数据。代理商采用机会主义的主动学习,选择关于单词如何与对象有关的问题,从而提高其对感知概念的理解。我们在亚马逊机械土耳其人上评估了这个代理。在对话所引起的数据培训之后,代理减少了在接收更高的可用性等级的同时提出的对话问题的数量。此外,我们展示了机器人平台上的代理,在那里它在完成真实世界的任务时学习了Y上的新感觉概念。

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