Oil spill detection by a support vector machine based on polarization decomposition characteristics

ZOU Yarong SHI Lijian ZHANG Shengli LIANG Chao ZENG Tao

邹亚荣, 石立坚, 张胜利, 梁超, 曾韬. 结合极化分解特征的SVM溢油检测研究[J]. 海洋学报英文版, 2016, 35(9): 86-90. doi: 10.1007/s13131-016-0935-5
引用本文: 邹亚荣, 石立坚, 张胜利, 梁超, 曾韬. 结合极化分解特征的SVM溢油检测研究[J]. 海洋学报英文版, 2016, 35(9): 86-90. doi: 10.1007/s13131-016-0935-5
ZOU Yarong, SHI Lijian, ZHANG Shengli, LIANG Chao, ZENG Tao. Oil spill detection by a support vector machine based on polarization decomposition characteristics[J]. Acta Oceanologica Sinica, 2016, 35(9): 86-90. doi: 10.1007/s13131-016-0935-5
Citation: ZOU Yarong, SHI Lijian, ZHANG Shengli, LIANG Chao, ZENG Tao. Oil spill detection by a support vector machine based on polarization decomposition characteristics[J]. Acta Oceanologica Sinica, 2016, 35(9): 86-90. doi: 10.1007/s13131-016-0935-5

结合极化分解特征的SVM溢油检测研究

doi: 10.1007/s13131-016-0935-5

Oil spill detection by a support vector machine based on polarization decomposition characteristics

  • 摘要: 海洋环境对海洋资源的利用有着密切的关系,近年来,海上溢油给海洋环境造成巨大的危害,及早发现溢油对于海洋的对于海洋防灾减灾具有重要的意义。遥感是目前主要的溢油监测手段之一,采用全极化SAR数据,对全极化SAR数据进行处理,提取极化分解参数熵H与反熵A,开展H与A的组合特征谱分析,构建溢油极化特征谱,获得对溢油具有明显表现的极化特征谱,从而基于支持向量机进行溢油的遥感检测,结果表明:基于(1-A)(1-H)、(1-H)A的参数提取,效果较为明显;而基于HA参数的溢油信息提取,效果则相对不佳。两者的结合与H、A的值有密切的关系,一般来说H的值大于0.7时,A的值一般较小,此时运用(1-A)(1-H)、(1-H)A参数进行溢油提取效果明显。不论采用那个结合参数,油井信息都会对溢油信息提取造成一定的虚警,尤其是利用(1-A)(1-H)进行溢油信息提取,基于(1-A)H、(1-H)A参数的虚警相对较小,但图像的噪声较大。运用极化特征谱的SVM进行溢油检测,能有效的检测出溢油信息,且精度高于基于单极化特性的检测方法。
  • Arnt-B á rre Salberg,Φystein Rudjord,Anne HS Solberg.2012 Model based oil spill detection using polarimetric sar in Proc.IGARSS, 5884-5887
    Cai Yang,Zou Yarong,Liang Chao,et al.2016.Research on polarization of oil spill and detection.Acta Oceanologica Sinica,35(3):84-89
    Cloude S R.1986.Polarimetry:The characterization of effect in EM scattering[dissertation].Birmingham:Birmingham University
    Del Frate F,Latini D,Taravat A,et al.2013.A novel multi-band SAR data technique for fully automatic oil spill detection in the ocean.In:Proceedings of SPIE 8891,SAR Image Analysis,Modeling, and Techniques XⅢ.Dresden,Germany:SPIE
    Garcia-Pineda O,MacDonald I,Hu Chuanmin,et al.2014.Detection and mapping of floating oil emulsions with synthetic aperture radar (SAR) imagery.International Oil Spill Conference Proceedings, 2014(1):300657
    Li Yu,Zhang Yuanzhi,Chen Jie,et al.2013.Improved compact polarimetric SAR quad-pol reconstruction algorithm for oil spill detection.IEEE Geoscience and Remote Sensing Letters,11(6):1139-1142
    Marghany M,van Genderen J.2014.Entropy algorithm for automatic detection of oil spill from radarsat-2 SAR data.IOP Conference Series:Earth and Environmental Science,18:012051
    Migliaccio M,Ferdinando Nunziata,Antonio Montuori,et al.2011.A multifrequency polarimetric SAR processing chain to observe oil fields in the Gulf of Mexico.IEEE Transactions on Geoscience and Remote Sensing,49(12):4729-4762
    Salberg A B,Rudjord á,Solberg A H S.2014.Oil spill detection in hybrid-polarimetric SAR images.IEEE Transactions on Geoscience and Remote Sensing,52(10):6521-6533
    Staples G,Touzi R.2014.The application of RADARSAT-2 quad-polarized data for oil slick characterization.International Oil Spill Conference Proceedings,2014(1):2242-2252
    Wang Chao,Zhang Hong,Chen Xi,et al.2008.Treatment of Images of Fully Polarimetric Synthetic Aperture Radar (in Chinese).Beijing:Science Press,100-106
    Wang Guiwu,Zhang Yuanzhi,Lin Hui.2009.A study of oil spill detection using ASAR images.Acta Oceanologica Sinica,28(4):32-37
    Zou Yarong,Liang Chao,Zeng Tao.2014.Oil spill identification using SVM based on polarization parameters.Journal of Marine Sciences (in Chinese),31(3):71-75
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出版历程
  • 收稿日期:  2015-08-24
  • 修回日期:  2015-11-02

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