Deep learning based automatic detection of offshore oil slicks using SAR data and contextual information

04/13/2022
by   Emna Amri, et al.
0

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 years over 3 exploration and monitoring areas worldwide. All the considered SAR images and related annotation relate to real oil slick monitoring scenarios. Further, wind estimation is systematically computed to enrich the data collection. Paper contributions are the following : (i) a performance comparison of two deep learning approaches: semantic segmentation using FC-DenseNet and instance segmentation using Mask-RCNN. (ii) the introduction of meteorological information (wind speed) is deemed valuable for oil slick detection in the performance evaluation. The main results of this study show the effectiveness of slick detection by deep learning approaches, in particular FC-DenseNet, which captures more than 92 Furthermore, a strong correlation between model performances and contextual information such as slick size and wind speed is demonstrated in the performance evaluation. This work opens perspectives to design models that can fuse SAR and wind information to reduce the false alarm rate.

READ FULL TEXT

page 2

page 4

page 6

page 7

research
03/16/2023

Reduction of rain-induced errors for wind speed estimation on SAR observations using convolutional neural networks

Synthetic Aperture Radar is known to be able to provide high-resolution ...
research
02/03/2023

Dependence of ocean surface filaments on wind speed: An observational study of North Atlantic right whale habitat

Coherent filaments at the ocean surface often appear to be transient wat...
research
04/23/2023

Automatized marine vessel monitoring from sentinel-1 data using convolution neural network

The advancement of multi-channel synthetic aperture radar (SAR) system i...
research
10/28/2022

Deep Learning-Based Anomaly Detection in Synthetic Aperture Radar Imaging

In this paper, we proposed to investigate unsupervised anomaly detection...
research
07/15/2022

Rain Rate Estimation with SAR using NEXRAD measurements with Convolutional Neural Networks

Remote sensing of rainfall events is critical for both operational and s...
research
02/14/2022

Context-Preserving Instance-Level Augmentation and Deformable Convolution Networks for SAR Ship Detection

Shape deformation of targets in SAR image due to random orientation and ...
research
12/15/2022

Deep Learning-Based Automatic Assessment of AgNOR-scores in Histopathology Images

Nucleolar organizer regions (NORs) are parts of the DNA that are involve...

Please sign up or login with your details

Forgot password? Click here to reset