HG-Lane: High-Fidelity Generation of Lane Scenes under Adverse Weather and Lighting Conditions without Re-annotation
arXiv cs.CV / 3/12/2026
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Key Points
- HG-Lane introduces a high-fidelity generation framework for lane scenes under adverse weather and lighting conditions that does not require re-annotation, addressing data scarcity in existing datasets.
- The authors construct a 30,000-image benchmark with adverse weather and lighting scenarios to evaluate lane detection under challenging conditions.
- The framework significantly improves lane detection performance: for CLRNet, overall mF1 on the benchmark rises by 20.87%, and F1@50 scores improve across categories including overall (19.75%), normal (8.63%), snow (38.8%), rain (14.96%), fog (26.84%), night (21.5%), and dusk (12.04%).
- They release code and dataset at GitHub, enabling practitioners to reproduce and build upon the work.
- This work advances robustness of autonomous driving systems in harsh weather, contributing to safer highway operation and research into data-efficient annotation strategies.
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