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Situated Resolution and Generation of Spatial Referring Expressions for Robotic Assistants

机译:位于机器人助手的地点分辨率和生成空间引用表达式

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In this paper we present an approach to the task of generating and resolving referring expressions (REs) for conversational mobile robots. It is based on a spatial knowledge base encompassing both robot- and human-centric representations. Existing algorithms for the generation of referring expressions (GRE) try to find a description that uniquely identifies the referent with respect to other entities that are in the current context. Mobile robots, however, act in large-scale space, that is environments that are larger than what can be perceived at a glance, e.g. an office building with different floors, each containing several rooms and objects. One challenge when referring to elsewhere is thus to include enough information so that the interlocutors can extend their context appropriately. We address this challenge with a method for context construction that can be used for both generating and resolving REs - two previously disjoint aspects. Our approach is embedded in a bi-directional framework for natural language processing for robots.
机译:在本文中,我们提出了一种方法来为会话移动机器人生成和解决参考表达式(RES)的任务。它基于包括机器人和以人为本的表示的空间知识库。用于生成引用表达式(GRE)的现有算法尝试了解唯一地识别关于在当前上下文中的其他实体的参考。然而,移动机器人在大规模的空间中行动,即大于可以一目了然地被认为的环境,例如,一个带有不同地板的办公大楼,每个都包含几个房间和物体。因此,在其他地方提到其他地方的一个挑战是包括足够的信息,以便对话者可以适当地扩展其上下文。我们通过用于生成和解析res-2以前不相交的方面的上下文构造方法来解决这一挑战。我们的方法嵌入了用于机器人的自然语言处理的双向框架。

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