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Detection and classification of oil spill and look-alike spots from SAR imagery using an Artificial Neural Network

机译:使用人工神经网络的SAR图像检测和分类漏油和视野斑点

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Oil spills represent a major threat to ocean ecosystems and their health. The recent incident in the Gulf of Mexico demonstrates the potentially catastrophic nature of offshore oil spills. Illicit pollution requires continuous monitoring and satellite remote sensing technology represents an attractive option for operational oil spill detection. Previous studies have shown that active microwave satellite sensors, particularly Synthetic Aperture Radar (SAR) can be effectively used for the detection and classification of oil spills. Oil spills appear as dark spots in SAR images. However, similar dark spots may arise from a range of unrelated meteorological and oceanographic phenomena, resulting in misidentification. A major focus of research in this area is the development of algorithms to distinguish oil spills from ‘look-alikes’. This paper describes the development of a new approach to SAR oil spill detection using two different Artificial Neural Networks (ANN). The first ANN segments a SAR image to identify pixels belonging to candidate oil spill features. A set of statistical feature parameters are then extracted and divided into subsets to facilitate sensitivity analyses. The second ANN classifies objects into oil spills or look-alikes according to their feature parameters. A pilot study employed sixty-two ERS-2 SAR and ENVSAT ASAR images of verified oil spills or look-alikes to train and evaluate the algorithm. Overall accuracies of 96.52 % were obtained for pixel segmentation and 95.2 % for feature classification. The segmentation approach outperformed established edge detection and adaptive thresholding techniques. An analysis of feature descriptors in the classification stage highlighted the importance of image gradient information.
机译:漏油代表了海洋生态系统和健康的一大威胁。最近发生的事件在墨西哥湾的海上演示漏油的可能是灾难性的性质。非法污染需要连续监测和卫星遥感技术代表了操作漏油检测一个有吸引力的选择。以前的研究已经表明,有源微波卫星传感器,特别是合成孔径雷达(SAR)可以有效地用于石油泄漏的检测和分类。漏油出现在SAR图像暗点。但是,类似的黑斑可以从一系列不相关的气象和海洋现象出现,从而导致错误识别。在这方面研究的主要焦点是算法的开发从“外观相似”区分漏油。本文介绍了采用两种不同的人工神经网络(ANN)的新方法SAR溢油检测的发展。第一ANN段一SAR图像识别属于候选溢油功能像素。然后一组统计特征参数的提取,并分成子集,以促进灵敏度分析。第二ANN进行分类,根据他们的特征参数对象到漏油或外观相似。初步研究采用62 ERS-2证实漏油或外观相似的SAR和ASAR ENVSAT图像进行训练和评估算法。为像素分割和特征分类为95.2%,得到的96.52%的总精度。的分割方法优于建立边缘检测和自适应阈值化技术。特征描述符在分类阶段的分析突出的图像梯度信息的重要性。

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