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End-to-End Urban Driving by Imitating a Reinforcement Learning Coach

About

End-to-end approaches to autonomous driving commonly rely on expert demonstrations. Although humans are good drivers, they are not good coaches for end-to-end algorithms that demand dense on-policy supervision. On the contrary, automated experts that leverage privileged information can efficiently generate large scale on-policy and off-policy demonstrations. However, existing automated experts for urban driving make heavy use of hand-crafted rules and perform suboptimally even on driving simulators, where ground-truth information is available. To address these issues, we train a reinforcement learning expert that maps bird's-eye view images to continuous low-level actions. While setting a new performance upper-bound on CARLA, our expert is also a better coach that provides informative supervision signals for imitation learning agents to learn from. Supervised by our reinforcement learning coach, a baseline end-to-end agent with monocular camera-input achieves expert-level performance. Our end-to-end agent achieves a 78% success rate while generalizing to a new town and new weather on the NoCrash-dense benchmark and state-of-the-art performance on the challenging public routes of the CARLA LeaderBoard.

Zhejun Zhang, Alexander Liniger, Dengxin Dai, Fisher Yu, Luc Van Gool• 2021

Related benchmarks

TaskDatasetResultRank
Autonomous DrivingCARLA Town05 (Long)
DS41.6
46
Autonomous DrivingLongest6
DS55.27
35
Autonomous DrivingLongest6 36 routes 1.0
DS0.6014
17
Autonomous DrivingCARLA 42 routes
Driving Score65.08
17
Autonomous DrivingCARLA Town05 (Short)
DS Score65.26
15
Autonomous DrivingCARLA Town05 (Long)
DS43.64
15
Autonomous DrivingCARLA
MACs (G)17.1
8
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