HRI
Robot behavior adaptation for human-robot interaction based on policy gradient reinforcement learning
Noriaki Mitsunaga, Christian Smith, Takayuki Kanda, Hiroshi Ishiguro, Norihiro Hagita
- Year
- 2005
- Citations
- 67
Abstract
In this paper, we propose an adaptation mechanism for robot behaviors to make robot-human interactions run more smoothly. We propose such a mechanism based on reinforcement learning, which reads minute body signals from a human partner, and uses this information to adjust interaction distances, gaze meeting, and motion speed and timing in human-robot interaction. We show that this enables autonomous adaptation to individual preferences by an experiment with twelve subjects.
Keywords
Reinforcement learningAdaptation (eye)RobotMechanism (biology)Computer scienceHuman–robot interactionArtificial intelligenceMotion (physics)GazeRobot learning
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