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首页> 外文期刊>Journal of Experimental and Theoretical Artificial Intelligence >Probabilistic reference and grounding with PRAGR for dialogues with robots
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Probabilistic reference and grounding with PRAGR for dialogues with robots

机译:PRAGR的概率参考和基础,可与机器人对话

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In this paper, we present a system for effective referential human-robot communication in the face of perceptual deviation using the Probabilistic Reference And GRounding mechanism PRAGR and vague feature models based on prototypes. PRAGR can handle descriptions of arbitrary complexity including spatial relations and uses flexible concept assignment in generation and resolution of referring expressions for bridging conceptual gaps in referential robot-robot or human-robot interaction. We evaluate the benefit of using vague as compared to crisp properties regarding referential success and robustness towards perspective alignment error in referential robot-robot and human-robot communication.
机译:在本文中,我们提出了一种使用概率参考和GRounding机制PRAGR和基于原型的模糊特征模型,在感知偏差下有效的参考人机通信系统。 PRAGR可以处理包括空间关系在内的任意复杂性的描述,并在生成和解析引用表达式时使用灵活的概念分配,以弥合参考机器人-机器人或人机交互中的概念鸿沟。我们评估了在参考机器人-机器人和人-机器人通信中,对于参考成功和针对透视对齐错误的鲁棒性,与模糊属性相比,使用模糊的优势。

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