Intention-aware online POMDP planning for autonomous driving in a crowd

IEEE International Conference on Robotics and Automation(2015)

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摘要
This paper presents an intention-aware online planning approach for autonomous driving amid many pedestrians. To drive near pedestrians safely, efficiently, and smoothly, autonomous vehicles must estimate unknown pedestrian intentions and hedge against the uncertainty in intention estimates in order to choose actions that are effective and robust. A key feature of our approach is to use the partially observable Markov decision process (POMDP) for systematic, robust decision making under uncertainty. Although there are concerns about the potentially high computational complexity of POMDP planning, experiments show that our POMDP-based planner runs in near real time, at 3 Hz, on a robot golf cart in a complex, dynamic environment. This indicates that POMDP planning is improving fast in computational efficiency and becoming increasingly practical as a tool for robot planning under uncertainty.
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关键词
Markov processes,decision making,mobile robots,path planning,pedestrians,road vehicles,robust control,autonomous driving,autonomous vehicles,intention-aware online POMDP planning,partially observable Markov decision process,pedestrians safety,robot planning,robust decision making,
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