Learning World Transition Model for Socially Aware Robot Navigation

2021 IEEE International Conference on Robotics and Automation (ICRA)(2021)

Cited 18|Views18
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Abstract
Moving in dynamic pedestrian environments is one of the important requirements for autonomous mobile robots. We present a model-based reinforcement learning approach for robots to navigate through crowded environments. The navigation policy is trained with both real interaction data from multi-agent simulation and virtual data from a deep transition model that predicts the evolution of surrounding...
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Key words
Training,Navigation,Dynamics,Reinforcement learning,Predictive models,Laser modes,Data models
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