Home /Research /A Multi-layer LSTM-based Approach for Robot Command Interaction Modeling
HRI

A Multi-layer LSTM-based Approach for Robot Command Interaction Modeling

Martino Mensio, Emanuele Bastianelli, Ilaria Tiddi, Giuseppe Rizzo

Year
2018
Access
Open access

Abstract

As the first robotic platforms slowly approach our everyday life, we can imagine a near future where service robots will be easily accessible by non-expert users through vocal interfaces. The capability of managing natural language would indeed speed up the process of integrating such platform in the ordinary life. Semantic parsing is a fundamental task of the Natural Language Understanding process, as it allows extracting the meaning of a user utterance to be used by a machine. In this paper, we present a preliminary study to semantically parse user vocal commands for a House Service robot, using a multi-layer Long-Short Term Memory neural network with attention mechanism. The system is trained on the Human Robot Interaction Corpus, and it is preliminarily compared with previous approaches.

Keywords

cs.CLcs.LG

Related papers

Browse all HRI papers