Neural Network Based Reinforcement Learning for Audio-Visual Gaze Control in Human-Robot Interaction
This addresses the problem of enabling robots to learn socially acceptable gaze behavior autonomously, though it is incremental as it builds on existing reinforcement learning and neural network techniques.
The paper tackles robot gaze control in human-robot interaction by developing a neural network-based reinforcement learning method that enables a robot to autonomously learn to focus on groups of people using audio-visual inputs, with experiments showing robustness and best performance when both modalities are used.
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.