Polar R-CNN: End-to-End Lane Detection with Fewer Anchors
Lane detection is a critical and challenging task in autonomous driving, particularly in real-world scenarios where traffic lanes can be slender, lengthy, and often obscured by other vehicles, complicating detection efforts. Existing anchor-based methods typically rely on prior lane anchors to extra...
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Zusammenfassung: | Lane detection is a critical and challenging task in autonomous driving,
particularly in real-world scenarios where traffic lanes can be slender,
lengthy, and often obscured by other vehicles, complicating detection efforts.
Existing anchor-based methods typically rely on prior lane anchors to extract
features and subsequently refine the location and shape of lanes. While these
methods achieve high performance, manually setting prior anchors is cumbersome,
and ensuring sufficient coverage across diverse datasets often requires a large
amount of dense anchors. Furthermore, the use of Non-Maximum Suppression (NMS)
to eliminate redundant predictions complicates real-world deployment and may
underperform in complex scenarios. In this paper, we propose Polar R-CNN, an
end-to-end anchor-based method for lane detection. By incorporating both local
and global polar coordinate systems, Polar R-CNN facilitates flexible anchor
proposals and significantly reduces the number of anchors required without
compromising performance.Additionally, we introduce a triplet head with
heuristic structure that supports NMS-free paradigm, enhancing deployment
efficiency and performance in scenarios with dense lanes.Our method achieves
competitive results on five popular lane detection benchmarks--Tusimple,
CULane,LLAMAS, CurveLanes, and DL-Rai--while maintaining a lightweight design
and straightforward structure. Our source code is available at
https://github.com/ShqWW/PolarRCNN. |
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DOI: | 10.48550/arxiv.2411.01499 |