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Neural Network Based Reinforcement Learning for Audio-Visual Gaze Control in Human-Robot Interaction

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arxiv 1711.06834 v2 pith:VGKSFV3S submitted 2017-11-18 cs.RO cs.CVcs.NE

Neural Network Based Reinforcement Learning for Audio-Visual Gaze Control in Human-Robot Interaction

classification cs.RO cs.CVcs.NE
keywords robotgazecontrollearningnetworkneuralpeopleapproach
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper introduces a novel neural network-based reinforcement learning approach for robot gaze control. Our approach enables a robot to learn and to adapt its gaze control strategy for human-robot interaction neither with the use of external sensors nor with human supervision. The robot learns to focus its attention onto groups of people from its own audio-visual experiences, independently of the number of people, of their positions and of their physical appearances. In particular, we use a recurrent neural network architecture in combination with Q-learning to find an optimal action-selection policy; we pre-train the network using a simulated environment that mimics realistic scenarios that involve speaking/silent participants, thus avoiding the need of tedious sessions of a robot interacting with people. Our experimental evaluation suggests that the proposed method is robust against parameter estimation, i.e. the parameter values yielded by the method do not have a decisive impact on the performance. The best results are obtained when both audio and visual information is jointly used. Experiments with the Nao robot indicate that our framework is a step forward towards the autonomous learning of socially acceptable gaze behavior.

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