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HG-Lane: High-Fidelity Generation of Lane Scenes under Adverse Weather and Lighting Conditions without Re-annotation

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Lane detection is a crucial task in autonomous driving, as it helps ensure the safe operation of vehicles. However, existing datasets such as CULane and TuSimple contain relatively limited data under extreme weather conditions, including rain, snow, and fog. As a result, detection models trained on these datasets often become unreliable in such environments, which may lead to serious safety-critical failures on the road. To address this issue, we propose HG-Lane, a High-fidelity Generation framework for Lane Scenes under adverse weather and lighting conditions without requiring re-annotation. Based on this framework, we further construct a benchmark that includes adverse weather and lighting scenarios, containing 30,000 images. Experimental results demonstrate that our method consistently and significantly improves the performance of existing lane detection networks. For example, using the state-of-the-art CLRNet, the overall mF1 score on our benchmark increases by 20.87 percent. The F1@50 score for the overall, normal, snow, rain, fog, night, and dusk categories increases by 19.75 percent, 8.63 percent, 38.8 percent, 14.96 percent, 26.84 percent, 21.5 percent, and 12.04 percent, respectively. The code and dataset are available at: https://github.com/zdc233/HG-Lane.

Daichao Zhao, Qiupu Chen, Feng He, Xin Ning, Qiankun Li• 2026

Related benchmarks

TaskDatasetResultRank
Lane DetectionHG-Lane (test)--
23
Image GenerationAdverse-weather Synthetic Lane Dataset (test)
FID0.23
5
Lane DetectionAdverse-weather Synthetic Lane Dataset (test)
F1@5080.1
5
Lane DetectionSelf-collected Real-world Rain
F1 Score (IoU=50%)77.58
3
Lane DetectionSelf-collected Real-world Snow
F1@5055.65
3
Lane DetectionSelf-collected Real-world Fog
F1 Score @ IoU 50%65.57
3
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