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Open AccessJournal ArticleDOI

Comparison of Oil Spill Classifications Using Fully and Compact Polarimetric SAR Images

Yuanzhi Zhang, +3 more
- 16 Feb 2017 - 
- Vol. 7, Iss: 2, pp 193
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TLDR
In this article, a comparison between several algorithms for oil spill classifications using fully and compact polarimetric satellite synthetic aperture radar (SAR) images is presented, where dimension reduction algorithms, including principle component analysis (PCA) and the local linear embedding (LLE) algorithm, are employed to learn low dimensional and distinctive information from quad-polarimetric SAR features.
Abstract
In this paper, we present a comparison between several algorithms for oil spill classifications using fully and compact polarimetric SAR images. Oil spill is considered as one of the most significant sources of marine pollution. As a major difficulty of SAR-based oil spill detection algorithms is the classification between mineral and biogenic oil, we focus on quantitatively analyzing and comparing fully and compact polarimetric satellite synthetic aperture radar (SAR) modes to detect hydrocarbon slicks over the sea surface, discriminating them from weak-damping surfactants, such as biogenic slicks. The experiment was conducted on quad-pol SAR data acquired during the Norwegian oil-on-water experiment in 2011. A universal procedure was used to extract the features from quad-, dual- and compact polarimetric SAR modes to rank different polarimetric SAR modes and common supervised classifiers. Among all the dual- and compact polarimetric SAR modes, the π/2 mode has the best performance. The best supervised classifiers vary and depended on whether sufficient polarimetric information can be obtained in each polarimetric mode. We also analyzed the influence of the number of polarimetric parameters considered as inputs for the supervised classifiers, onto the detection/discrimination performance. We discovered that a feature set with four features is sufficient for most polarimetric feature-based oil spill classifications. Moreover, dimension reduction algorithms, including principle component analysis (PCA) and the local linear embedding (LLE) algorithm, were employed to learn low dimensional and distinctive information from quad-polarimetric SAR features. The performance of the new feature sets has comparable performance in oil spill classification.

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Citations
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Journal ArticleDOI

Sensors, Features, and Machine Learning for Oil Spill Detection and Monitoring: A Review

TL;DR: Review and analysis of different sources of remotely sensed data and various components of ML classification systems for oil spill detection and monitoring are presented in this study.
Journal ArticleDOI

Application of Deep Networks to Oil Spill Detection Using Polarimetric Synthetic Aperture Radar Images

TL;DR: Deep learning algorithms such as the stacked autoencoder (SAE) and deep belief network (DBN) are applied to optimize the polarimetric feature sets and reduce the feature dimension through layer-wise unsupervised pre-training to show that oil spill classification achieved by deep networks outperformed both support vector machine (SVM) and traditional artificial neural networks with similar parameter settings.
Journal ArticleDOI

Ocean Oil Spill Classification with RADARSAT-2 SAR Based on an Optimized Wavelet Neural Network

TL;DR: Experimental results have proven that the proposed approach is effective and applicable to classify the ocean oil spill and the convergence ability of optimized WNN can be enhanced, improving overall classification accuracy of oceanOil spill.
Journal ArticleDOI

Oil Spill Detection in Quad-Polarimetric SAR Images Using an Advanced Convolutional Neural Network Based on SuperPixel Model

TL;DR: It is proved that the SLIC superpixel method significantly improved the oil spill classification accuracy on all the polarimetric feature sets.
Journal ArticleDOI

Segmentation of Oil Spills on Side-Looking Airborne Radar Imagery with Autoencoders

TL;DR: Deep neural autoencoders are used to segment oil spills from Side-Looking Airborne Radar (SLAR) imagery to detect oil spills on Spanish coasts using deep selectional autoen coders and RED-nets (very deep Residual Encoder-Decoder Networks).
References
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Journal ArticleDOI

Discrimination between oil spill and look-alike using fractal dimension algorithm from RADARSAT-1 SAR and AIRSAR/POLSAR data

TL;DR: In this paper, a modification of the fractal box counting dimension was proposed to detect look-alikes and low wind zone areas in AIRSAR/POLSAR data.
Journal ArticleDOI

Repair wind field in oil contaminated areas with SAR images

TL;DR: In this paper, the authors compared the normalized radar cross section in the cases of oil spill, biogenic slicks, and clean sea areas with image samples made from 11-pixel NRCS average, and determined their thresholds of the synthetic aperture radar images.
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