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REMOTE SENSING FOR LAND & RESOURCES    2014, Vol. 26 Issue (2) : 99-104     DOI: 10.6046/gtzyyg.2014.02.17
Technology and Methodology |
Study of extraction methods for ocean surface oil spill using HJ-CCD data
GAI Yingying, ZHOU Bin, SUN Yuanfang, ZHOU Yan
Institute of Oceanographic Instrumentation, Shandong Academy of Sciences, Qingdao 266001, China
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Abstract  

Rapid and accurate access to the oil spill information is of great significance for dynamic monitoring, conservation and sustainable use of the oceans. HJ-1 is a new satellite platform designed for ecological environmental pollutions and disasters. However, the multispectral image obtained from HJ-CCD has insufficient spectral bands, and the accuracy of acquiring the oil spill coverage only by spectral information is low. In this paper, the oil spill that occurred in the Gulf of Mexico was selected as the research object. Based on the spectral analysis of different features, the authors chose the right texture structure factors and extracted the texture characteristics which affect oil spill identification by gray co-occurrence matrix. A decision tree model combining spectral characteristics with texture characteristics was established to extract the oil spill on the sea surface. A comparative analysis by using the result of maximum likelihood supervision classification method was performed, and the results show that, in comparison with the maximum likelihood classification method, the decision tree method could improve the user's accuracy and the producer's accuracy of oil spill extraction by 11.85% and 4.28% respectively.

Keywords mine remote sensing monitoring      implementation effect      index system      assessment method     
:  TP751.1  
Issue Date: 28 March 2014
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ZHOU Jinsheng
NIU Jianying
ZHANG Xu
YU yanrui
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ZHOU Jinsheng,NIU Jianying,ZHANG Xu, et al. Study of extraction methods for ocean surface oil spill using HJ-CCD data[J]. REMOTE SENSING FOR LAND & RESOURCES, 2014, 26(2): 99-104.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2014.02.17     OR     https://www.gtzyyg.com/EN/Y2014/V26/I2/99

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