Archive/SF-YOLO: A Physics-Guided Framework for Ship Detection in Foggy Maritime Scenarios
SF-YOLO: A Physics-Guided Framework for Ship Detection in Foggy Maritime Scenarios
Zhou Yang, Tujie Wu, Ruoling Deng et al.
15 de julho de 2026
en

Abstract

Foggy ship detection frequently suffers from image degradation, blurred object contours and a high missed detection rate. Moreover, most existing maritime datasets lack adequate real fog samples. To solve the above problems, in this paper, the Fog-SMD is constructed on the basis of atmospheric scattering principles and fractal theory in combination with a diffusion model to enrich samples covering various fog scenarios. On this basis, we develop an improved SF-YOLO model that takes YOLOv12 as the basic framework. By embedding the shallow–deep adaptive feature fusion module, scattering-guided refinement module and spatial-frequency dual feature attention module, the model can effectively alleviate feature loss resulting from image degradation in foggy environments. Weighted-EIoU loss is introduced to optimize the bounding box regression and reduce the localization deviation of slender ship targets. The experimental results show that SF-YOLO achieves mAP@50 and mAP@50:95 values of 79.3% and 61.6%, respectively, and outperforms mainstream detection algorithms; compared with YOLOv12n, it improves mAP@50:95 from 59.6% to 61.6%, with only a slight increase in parameters from 2.5 M to 2.8 M, providing a new solution for the practical deployment of detection systems and all-weather maritime monitoring in low-visibility foggy scenarios.

IPC Classification

G06B60

Keywords

sf-yolophysics-guidedframeworkshipdetectionfoggymaritimescenariosjournalmarinescienceengineeringfrequentlysuffersimagedegradationblurredobjectcontourshighmissedratemoreovermost
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