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Exploiting deep semantics and compositionality of natural language for Human-Robot-Interaction

Manfred Eppe, Sean Trott, Jerome A. Feldman

Year
2016
Citations
8

Abstract

We are developing a natural language interface for human robot interaction that implements reasoning about deep semantics in natural language. To realize the required deep analysis, we employ methods from cognitive linguistics, namely the modular and compositional framework of Embodied Construction Grammar (ECG) [18]. Using ECG, robots are able to solve fine-grained reference resolution problems and other issues related to deep semantics and compositionality of natural language. This also includes verbal interaction with humans to clarify commands and queries that are too ambiguous to be executed safely. We implement our NLU framework as a ROS package and present proof-of-concept scenarios with different robots, as well as a survey on the state of the art in knowledge-based language HRI.

Keywords

Principle of compositionalityComputer scienceSemantics (computer science)Natural language processingModular designArtificial intelligenceNatural languageRobotNatural language understandingGrammar

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