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Guidelines for improving task-based natural language understanding in human-robot rescue teams

机译:改善人机救援队基于任务的自然语言理解的准则

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Mixed human-robot teams are increasingly considered for accomplishing complex mission due to their complementary capabilities. A major barrier for deploying such heterogeneous teams in real-world settings, is the current lack of natural skills in robotic team members, such as the understanding and interpretation of natural language instructions that include referential descriptions of entities in the world. In this paper we report the results of an empirical study in which humans tend to use referring expressions. We show how the received results and ideas can be used as guidelines to improve dialogue systems. By integrating and extending our system with these results, we will show how complex natural language instructions can be easily translated by robotic systems.
机译:由于混合机器人的互补功能,人们越来越多地考虑将它们混合起来以完成复杂的任务。在现实环境中部署这样的异构团队的主要障碍是机器人团队成员当前缺乏自然技能,例如对自然语言指令的理解和解释,其中包括对世界实体的引用性描述。在本文中,我们报告了一项人类研究倾向于使用指称表达的实证研究的结果。我们展示了如何将收到的结果和想法用作改善对话系统的指导原则。通过将我们的系统与这些结果集成和扩展,我们将展示机器人系统如何轻松地翻译复杂的自然语言指令。

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