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Identification of ocean oil spills in SAR imagery based on fuzzy logic algorithm

机译:基于模糊逻辑算法的SAR图像海洋溢油识别

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摘要

Ocean oil spills cause serious damage to the marine environment, especially around coastal waters. Synthetic aperture radar (SAR) has been proven to be a useful tool for oil spill detection under low to moderate wind conditions. SAR operates in the microwave band and the data is not affected by the cloud cover and dayight conditions. However, the operational application of SAR for oil spill detection in the ocean is limited by false alarm targets or lookalike phenomena such as low wind speed, natural films, etc. In this study, we develop analysis of variance (ANOVA) to extract the features based on their characteristic geometry, grey level and texture features in the SAR images. We further analysed a fuzzy logic algorithm to separate oil spills features from lookalikes. We trained this algorithm using 38 SAR images (11 ENVISAT-Advanced Synthetic Aperture Radar (ASAR) and 27 European Remote Sensing (ERS)-2 SAR images) with 120 known oil spills and 80 lookalikes to generate an oil spill probability of a dark pixel in a SAR image. An independent set of 26 SAR images were used to validate the algorithm and it was found that 80.9% of the oil spills were correctly classified, and 20.0% of the lookalikes were wrongly classified as oil spills. The complete algorithmic procedure was coded in Matlab7.0 using its Fuzzy Logic Toolbox.
机译:海洋溢油严重损害海洋环境,尤其是沿海水域。合成孔径雷达(SAR)已被证明是在中低风情况下检测漏油的有用工具。 SAR在微波波段工作,数据不受云层覆盖和昼/夜条件的影响。但是,SAR在海洋漏油检测中的操作应用受到虚假警报目标或类似现象(例如低风速,自然膜等)的限制。在这项研究中,我们开发了方差分析(ANOVA)来提取特征基于它们在SAR图像中的特征几何,灰度和纹理特征。我们进一步分析了模糊逻辑算法,以将溢油特征与相似特征区分开。我们使用38个SAR图像(11个ENVISAT-Advanced合成孔径雷达(ASAR)和27个欧洲遥感(ERS)-2 SAR图像)训练了该算法,该图像具有120个已知的漏油和80个相似的图像,以产生暗像素的漏油概率在SAR图像中。使用一组独立的26张SAR图像来验证该算法,发现正确分类了80.9%的溢油,而将20.0%的相似类错误地分类为溢油。使用Matlab7.0的模糊逻辑工具箱对完整的算法过程进行了编码。

著录项

  • 来源
    《International journal of remote sensing》 |2010年第18期|p.4819-4833|共15页
  • 作者单位

    Ocean Remote Sensing Institute, Ocean University of China, Key Laboratory for Ocean Remote Sensing, Ministry of Education of China, Qingdao, 266100, China;

    rnOcean Remote Sensing Institute, Ocean University of China, Key Laboratory for Ocean Remote Sensing, Ministry of Education of China, Qingdao, 266100, China;

    rnIMSG at NOAA/NESDIS, NOAA E/RA3, WWBG, Camp Springs,MD 20746-4304, USA;

    rnOcean Remote Sensing Institute, Ocean University of China, Key Laboratory for Ocean Remote Sensing, Ministry of Education of China, Qingdao, 266100, China;

    rnNOAA/NESDIS/STAR, NOAA E/RA3, WWBG, Camp Springs,MD 20746-4304, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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