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Robust spoken instruction understanding for HRI

机译:对HRI的语音理解能力强

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Natural human-robot interaction requires different and more robust models of language understanding (NLU) than non-embodied NLU systems. In particular, architectures are required that (1) process language incrementally in order to be able to provide early back channel feedback to human speakers; (2) use pragmatic contexts throughout the understanding process to infer missing information; and (3) handle the underspecified, fragmentary, or otherwise ungrammatical utterances that are common in spontaneous speech. In this paper, we describe our attempts at developing an integrated natural language understanding architecture for HRI, and demonstrate its novel capabilities using challenging data collected in human-human interaction experiments.
机译:与非嵌入式NLU系统相比,自然的人机交互需要不同且更强大的语言理解(NLU)模型。特别地,需要这样的体系结构:(1)逐步处理语言,以便能够向人类说话者提供早期的反向声道反馈; (2)在整个理解过程中使用实用语境来推断缺失的信息; (3)处理自发性言语中常见的未指定的,不完整的或其他不合语法的话语。在本文中,我们描述了我们为HRI开发集成的自然语言理解体系结构的尝试,并使用在人与人之间的交互实验中收集的具有挑战性的数据展示了其新颖的功能。

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