AI RESEARCH
A Data Efficiency Study of Synthetic Fog for Object Detection Using the Clear2Fog Pipeline
arXiv CS.CV
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ArXi:2605.12608v1 Announce Type: new Object detection in adverse weather is critical for the safety of autonomous vehicles; however, the scarcity of labelled, real-world foggy data remains a significant bottleneck. In this paper, we propose Clear2Fog (C2F), an end-to-end, physics-based pipeline that simulates fog on clear-weather datasets while ensuring sensor-level consistency across camera and LiDAR. By using monocular depth estimation and a novel atmospheric light estimation method, C2F overcomes structural artifacts and chromatic biases common in existing techniques.