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Learning from All Vehicles

About

In this paper, we present a system to train driving policies from experiences collected not just from the ego-vehicle, but all vehicles that it observes. This system uses the behaviors of other agents to create more diverse driving scenarios without collecting additional data. The main difficulty in learning from other vehicles is that there is no sensor information. We use a set of supervisory tasks to learn an intermediate representation that is invariant to the viewpoint of the controlling vehicle. This not only provides a richer signal at training time but also allows more complex reasoning during inference. Learning how all vehicles drive helps predict their behavior at test time and can avoid collisions. We evaluate this system in closed-loop driving simulations. Our system outperforms all prior methods on the public CARLA Leaderboard by a wide margin, improving driving score by 25 and route completion rate by 24 points. Our method won the 2021 CARLA Autonomous Driving challenge. Code and data are available at https://github.com/dotchen/LAV.

Dian Chen, Philipp Kr\"ahenb\"uhl• 2022

Related benchmarks

TaskDatasetResultRank
Autonomous DrivingCARLA Town05 (Long)
DS46.5
46
Autonomous DrivingLongest6
DS34.2
35
Autonomous DrivingLongest6 36 routes 1.0
DS0.4841
17
Autonomous DrivingCARLA Leaderboard official 1.0 (test)
Driving Score62
15
Autonomous DrivingCARLA Leaderboard May 2022 (public)
Driving Score61.846
11
Autonomous Drivingpublic CARLA leaderboard Nov 2022 (test)
Driving Score0.6185
11
Autonomous DrivingCARLA Leaderboard v1 (test)
Driving Score62
11
Autonomous DrivingCARLA Jun 2022 (public leaderboard)
Driving Score0.6185
10
Autonomous DrivingLongest6 (train towns)
DS58
9
Autonomous DrivingCARLA leaderboard Jan 2022 (test)
Driving Score61.85
8
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Code

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