Understanding referring expressions in a person-machine spoken dialogue

Claudia Pateras, G. Dudek, R. Mori
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引用次数: 19

Abstract

In the domain of mobile robotic task execution under dialogue control, a primary goal is to identify the task target which is specified by a natural language description. A number of concepts are expressed in the user spoken language by vague terms like "the big box" and "very close to the door". We use fuzzy logic to map these vague terms onto the quantitative data collected by system sensors. Fuzziness may cause uncertainty in interpretation and, in particular, in understanding references. This uncertainty is abated by collecting additional information through queries to the user and autonomous sensing. Entropy is used to select the queries having the greatest discriminatory power among referent candidates. In addition, we examine the trade-off between querying, sensing and uncertainty. A framework to deal with each of these issues has been developed and is presented.
理解人机对话中的指称表达
在对话控制下的移动机器人任务执行领域,主要目标是识别由自然语言描述指定的任务目标。在用户的口头语言中,许多概念都是用模糊的术语来表达的,比如“大盒子”和“离门很近”。我们使用模糊逻辑将这些模糊术语映射到系统传感器收集的定量数据上。模糊性可能导致解释的不确定性,特别是在理解参考文献时。通过向用户查询和自主感知收集附加信息,可以减少这种不确定性。使用熵来选择在参考候选者中具有最大区别力的查询。此外,我们还研究了查询、感知和不确定性之间的权衡。已经制定并提出了处理这些问题的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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