Dark Spot Detection from SAR Images Based on Superpixel Deeper Graph Convolutional Network
Xiaojian Liu, Yansheng Li

TL;DR
This paper introduces a novel superpixel-based deep graph convolutional network for detecting dark spots in SAR images, improving robustness and accuracy in oil spill detection tasks.
Contribution
It is the first to apply superpixel deeper graph convolutional networks to dark spot detection in SAR images, enhancing feature robustness and detection performance.
Findings
SGDCN outperforms traditional methods in dark spot detection accuracy.
The proposed method is robust against noisy SAR images.
A new publicly available dataset for dark spot detection is provided.
Abstract
Synthetic Aperture Radar (SAR) is the main instrument utilized for the detection of oil slicks on the ocean surface. In SAR images, some areas affected by ocean phenomena, such as rain cells, upwellings, and internal waves, or discharge from oil spills appear as dark spots on images. Dark spot detection is the first step in the detection of oil spills, which then become oil slick candidates. The accuracy of dark spot segmentation ultimately affects the accuracy of oil slick identification. Although some advanced deep learning methods that use pixels as processing units perform well in remote sensing image semantic segmentation, detecting some dark spots with weak boundaries from noisy SAR images remains a huge challenge. We propose a dark spot detection method based on superpixels deeper graph convolutional networks (SGDCN) in this paper, which takes the superpixels as the processing…
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Taxonomy
TopicsOil Spill Detection and Mitigation · Atmospheric and Environmental Gas Dynamics · Image Enhancement Techniques
MethodsGraph Neural Network
