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
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