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ReasonNet: End-to-End Driving with Temporal and Global Reasoning

About

The large-scale deployment of autonomous vehicles is yet to come, and one of the major remaining challenges lies in urban dense traffic scenarios. In such cases, it remains challenging to predict the future evolution of the scene and future behaviors of objects, and to deal with rare adverse events such as the sudden appearance of occluded objects. In this paper, we present ReasonNet, a novel end-to-end driving framework that extensively exploits both temporal and global information of the driving scene. By reasoning on the temporal behavior of objects, our method can effectively process the interactions and relationships among features in different frames. Reasoning about the global information of the scene can also improve overall perception performance and benefit the detection of adverse events, especially the anticipation of potential danger from occluded objects. For comprehensive evaluation on occlusion events, we also release publicly a driving simulation benchmark DriveOcclusionSim consisting of diverse occlusion events. We conduct extensive experiments on multiple CARLA benchmarks, where our model outperforms all prior methods, ranking first on the sensor track of the public CARLA Leaderboard.

Hao Shao, Letian Wang, Ruobing Chen, Steven L. Waslander, Hongsheng Li, Yu Liu• 2023

Related benchmarks

TaskDatasetResultRank
Autonomous DrivingCARLA 42 routes
Driving Score93.25
17
Autonomous DrivingCARLA Town05 (Short)
DS Score95.71
15
Autonomous DrivingCARLA Town05 (Long)
DS73.22
15
Autonomous Drivingpublic CARLA leaderboard Nov 2022 (test)
Driving Score0.7995
11
Autonomous DrivingCARLA Leaderboard accessed Nov 2022
Driving Score79.95
8
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