首页 /研究 /Robust spoken instruction understanding for HRI
HRI

Robust spoken instruction understanding for HRI

Rehj Cantrell, Matthias Scheutz, Paul Schermerhorn, Xuan Wu

发表年份
2010
引用次数
15

摘要

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 backchannel 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.

关键词

Computer scienceNatural language understandingEmbodied cognitionSpoken languageProcess (computing)Natural languageNatural (archaeology)Human–robot interactionNatural language generationNatural language processing

相关论文

查看 HRI 分类全部论文