Reinforcement Learning based Control of Imitative Policies for Near-Accident Driving (2007.00178v1)
Abstract: Autonomous driving has achieved significant progress in recent years, but autonomous cars are still unable to tackle high-risk situations where a potential accident is likely. In such near-accident scenarios, even a minor change in the vehicle's actions may result in drastically different consequences. To avoid unsafe actions in near-accident scenarios, we need to fully explore the environment. However, reinforcement learning (RL) and imitation learning (IL), two widely-used policy learning methods, cannot model rapid phase transitions and are not scalable to fully cover all the states. To address driving in near-accident scenarios, we propose a hierarchical reinforcement and imitation learning (H-ReIL) approach that consists of low-level policies learned by IL for discrete driving modes, and a high-level policy learned by RL that switches between different driving modes. Our approach exploits the advantages of both IL and RL by integrating them into a unified learning framework. Experimental results and user studies suggest our approach can achieve higher efficiency and safety compared to other methods. Analyses of the policies demonstrate our high-level policy appropriately switches between different low-level policies in near-accident driving situations.
- Zhangjie Cao (34 papers)
- Erdem Bıyık (46 papers)
- Woodrow Z. Wang (4 papers)
- Adrien Gaidon (84 papers)
- Guy Rosman (42 papers)
- Dorsa Sadigh (162 papers)
- Allan Raventos (5 papers)