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Acquiring social interaction behaviours for telepresence robots via deep learning from demonstration

Kyriacos Shiarlis, João Messias, Shimon Whiteson

Year
2017
Citations
10

Abstract

As robots begin to inhabit public and social spaces, it is increasingly important to ensure that they behave in a socially appropriate way. However, manually coding social behaviours is prohibitively difficult since social norms are hard to quantify. Therefore, learning from demonstration (LfD), wherein control policies are inferred from demonstrations of correct behaviour, is a powerful tool for helping robots acquire social intelligence. In this paper, we propose a deep learning approach to learning social behaviours from demonstration. We apply this method to two challenging social tasks for a semi-autonomous telepresence robot. Our results show that our approach outperforms gradient boosting regression and performs well against a hard-coded controller. Furthermore, ablation experiments confirm that each element of our method is essential to its success.

Keywords

RobotHuman–computer interactionComputer scienceTeleroboticsHuman–robot interactionArtificial intelligenceMobile robot

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