Human-robot handovers are characterized by high uncertainty and poor structure of the problem that make them difficult tasks. While machine learning methods have shown promising results, their application to problems with large state dimensionality, such as in the case of humanoid robots, is still limited. Additionally, by using these methods and during the interaction with the human operator, no guarantees can be obtained on the correct interpretation of spatial constraints (e.g., from social rules). In this paper, we present Policy Improvement with Spatio-Temporal Affordance Maps - π-STAM, a novel iterative algorithm to learn spatial affordances and generate robot behaviors. Our goal consists in generating a policy that adapts to the unknown action semantics by using affordances. In this way, while learning to perform a human-robot handover task, we can (1) efficiently generate good policies with few training episodes, and (2) easily encode action semantics and, if available, enforce prior knowledge in it. We experimentally validate our approach both in simulation and on a real NAO robot whose task consists in taking an object from the hands of a human. The obtained results show that our algorithm obtains a good policy while reducing the computational load and time duration of the learning process.
Dettaglio pubblicazione
2016, 2016 IEEE-RAS 16th International Conference on Humanoid Robots (Humanoids), Pages 857-863
Learning human-robot handovers through π-STAM: Policy improvement with spatio-temporal affordance maps (04b Atto di convegno in volume)
Riccio Francesco, Capobianco Roberto, Nardi Daniele
ISBN: 9781509047185
Gruppo di ricerca: Artificial Intelligence and Robotics
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