Home /Research /Robot gains social intelligence through multimodal deep reinforcement learning
LEARNING

Robot gains social intelligence through multimodal deep reinforcement learning

Ahmed H. Qureshi, Yutaka Nakamura, Yuichiro Yoshikawa, Hiroshi Ishiguro

Year
2016
Citations
111

Abstract

For robots to coexist with humans in a social world like ours, it is crucial that they possess human-like social interaction skills. Programming a robot to possess such skills is a challenging task. In this paper, we propose a Multimodal Deep Q-Network (MDQN) to enable a robot to learn human-like interaction skills through a trial and error method. This paper aims to develop a robot that gathers data during its interaction with a human, and learns human interaction behavior from the high dimensional sensory information using end-to-end reinforcement learning. This paper demonstrates that the robot was able to learn basic interaction skills successfully, after 14 days of interacting with people.

Keywords

Reinforcement learningRobotComputer scienceTask (project management)Artificial intelligenceSocial robotHuman–computer interactionHuman–robot interactionRobot learningTask analysis

Related papers

Browse all LEARNING papers