Deep learning based automatic detection of offshore oil slicks using SAR data and contextual information
Emna Amri (LISTIC), Hermann Courteille (LISTIC), A Benoit (LISTIC),, Philippe Bolon (LISTIC), Dominique Dubucq, Gilles Poulain, Anthony Credoz

TL;DR
This paper demonstrates the effectiveness of deep learning models, especially FC-DenseNet, in automating offshore oil slick detection from SAR data, enhanced by wind information, over extensive real-world datasets.
Contribution
It compares deep learning approaches for oil slick detection and introduces wind speed as a valuable contextual feature, improving detection accuracy.
Findings
FC-DenseNet captures over 92% of oil slick instances
Wind speed significantly improves detection performance
Deep learning approaches outperform traditional methods
Abstract
Ocean surface monitoring, especially oil slick detection, has become mandatory due to its importance for oil exploration and risk prevention on ecosystems. For years, the detection task has been performed manually by photo-interpreters using Synthetic Aperture Radar (SAR) images with the help of contextual data such as wind. This tedious manual work cannot handle the increasing amount of data collected by the available sensors and thus requires automation. Literature reports conventional and semi-automated detection methods that generally focus either on oil slicks originating from anthropogenic (spills) or natural (seeps) sources on limited data collections. As an extension, this paper presents the automation of offshore oil slicks on an extensive database with both kinds of slicks. It builds upon the slick annotations of specialized photo-interpreters on Sentinel-1 SAR data for 4…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
