In this paper we propose a trainable system that learns grounded language models from examples with a minimum of user intervention and without feedback. We have focused on the acquisition of grounded meanings of spatial and adjective/noun terms. The system has been used to understand and subsequently to generate appropriate natural language descriptions of real objects and to engage in verbal interactions with a human partner. We have also addressed the problem of resolving eventual ambiguities arising during verbal interaction through an information theoretic approach.
Dindo, H., Zambuto, D. (2009). Resolving ambiguities in a grounded human-robot interaction. In Proc. of the 18th IEEE International Symposium on Robot and Human Interactive Communication (RO-MAN) (pp.408-414) [10.1109/ROMAN.2009.5326333].
Resolving ambiguities in a grounded human-robot interaction
DINDO, Haris;ZAMBUTO, Daniele
2009-01-01
Abstract
In this paper we propose a trainable system that learns grounded language models from examples with a minimum of user intervention and without feedback. We have focused on the acquisition of grounded meanings of spatial and adjective/noun terms. The system has been used to understand and subsequently to generate appropriate natural language descriptions of real objects and to engage in verbal interactions with a human partner. We have also addressed the problem of resolving eventual ambiguities arising during verbal interaction through an information theoretic approach.File | Dimensione | Formato | |
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