Litcius/Paper detail

LRA-UNet: A Lightweight Residual Attention Network for SAR Marine Oil Spill Detection

Yu Cai, Jingjing Su, Jun Song, D. L. Xu, L. Zhang, Gaoyuan Shen

2025Journal of Marine Science and Engineering6 citationsDOIOpen Access PDF

Abstract

Oil spills represent a serious threat to marine ecosystems. Remote sensing monitoring, especially based on synthetic aperture radar (SAR), have been extensively employed in marine environments due to its unique advantages. However, SAR images of marine oil spills exhibit challenges of weak boundaries, confusion with look-alike phenomena, and the difficulty of detecting small-scale targets. To address these issues, we propose LRA-UNet, a Lightweight Residual Attention UNet for semantic segmentation in SAR images. Our model integrates depthwise separable convolutions to reduce feature redundancy and computational cost, while adopting a residual encoder enhanced with the Simple Attention Module (SimAM) to improve the precise extraction of target features. Additionally, we design a joint loss function that incorporates Sobel-based edge information, emphasizing boundary features during training to enhance edge sharpness. Experimental results show that LRA-UNet achieves superior segmentation results, with a mIoU of 67.36%, surpassing the original UNet by 4.41%, and a 5.17% improvement in IoU for the oil spill category. These results confirm the effectiveness of our approach in accurately extracting oil spill regions from complex SAR imagery.

Topics & Concepts

ResidualOil spillEnvironmental scienceResidual oilPetroleum engineeringComputer scienceRemote sensingGeologyEnvironmental engineeringAlgorithmOil Spill Detection and MitigationMass Spectrometry Techniques and ApplicationsMaritime Navigation and Safety