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End to End Autonomous Driving via Occupancy and Motion Flow

  • Beihang University

科研成果: 书/报告/会议事项章节会议稿件同行评审

摘要

Many existing end-to-end autonomous driving methods involve reinforcement learning or multi-stage discrete task pipelines. Reinforcement learning approaches lack deterministic interpretability, and multi-stage discrete task pipelines rely on dense scene representations (detection, tracking, segmentation) and suffer from significant computational redundancy. Additionally, previous neural motion planners often treated perception and planning as independent components, leading to compromised trajectory accuracy and threatening driving safety. In this paper, we propose OFAD(Occupancy and motion Flow for Autonomous Driving), a novel end-to-end learning paradigm based on semantic occupancy and motion flow for perception, prediction and motion planning in autonomous vehicles, while generating interpretable intermediate representations. Furthermore, motion flow prediction is explicitly used as a cost function in the motion planning process, ensuring consistency between perception and planning. Experimental results on the large-scale manually-driven dataset, nuscenes, demonstrate that OFAD significantly outperforms previous planners in mimicking human driving, generates safer trajectories, and provides meaningful results for drivers.

源语言英语
主期刊名2024 IEEE International Conference on Real-Time Computing and Robotics, RCAR 2024
出版商Institute of Electrical and Electronics Engineers Inc.
360-365
页数6
ISBN(电子版)9798350372601
DOI
出版状态已出版 - 2024
活动2024 IEEE International Conference on Real-Time Computing and Robotics, RCAR 2024 - Alesund, 挪威
期限: 24 6月 202428 6月 2024

出版系列

姓名2024 IEEE International Conference on Real-Time Computing and Robotics, RCAR 2024

会议

会议2024 IEEE International Conference on Real-Time Computing and Robotics, RCAR 2024
国家/地区挪威
Alesund
时期24/06/2428/06/24

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