面向对象和GURLS结合的高空间分辨率遥感数据云检测
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  • 英文篇名:Cloud detection method of high spatial resolution remote sensing data combining object-oriented technique and GURLS classifier
  • 作者:殷亚秋 ; 冷玥 ; 赵玉灵 ; 安娜 ; 鞠星
  • 英文作者:YIN Yaqiu;LENG Yue;ZHAO Yuling;AN Na;JU Xing;China Aero Geophysical Survey & Remote Sensing Center for Land and Resources;China University of Geosciences(Beijing);
  • 关键词:云检测 ; 面向对象 ; GURLS ; 高空间分辨率 ; 遥感影像
  • 英文关键词:cloud detection;;object-oriented;;GURLS;;high spatial resolution;;remote sensing images
  • 中文刊名:CHTB
  • 英文刊名:Bulletin of Surveying and Mapping
  • 机构:中国国土资源航空物探遥感中心;中国地质大学(北京);
  • 出版日期:2019-05-25
  • 出版单位:测绘通报
  • 年:2019
  • 期:No.506
  • 基金:国土资源部航空地球物理与遥感地质重点实验室青年创新基金(2016YFL09);; 服务国家重大战略和国土开发保护地质调查项目(121201003000172705;121201003000172718)
  • 语种:中文;
  • 页:CHTB201905023
  • 页数:5
  • CN:05
  • ISSN:11-2246/P
  • 分类号:117-120+150
摘要
遥感信息获取过程中云是重要的干扰因素,随着国产高空间分辨率卫星数据的应用,实现数据的准确云检测对有效获取地面信息具有重要意义。本文以高分一号、高分二号多光谱影像为数据源,利用图像分割获取了同质对象,基于对象光谱、纹理和几何8种属性特征建立了规则集,以规则集为输入,利用阈值法和GURLS分类器结合进行了云检测。针对不同时相和场景的高分数据,将该方法与基于像素的最大似然法和SVM法进行了对比,结果表明该方法云提取精度均在95%以上,Kappa系数在0.9以上。
        Cloud is an important factor in remote sensing information acquisition. With the application of domestic high spatial resolution satellite data,accurate cloud detection has important significance to the ground information effective acquisition. In the paper,GF-1 and GF-2 multi-spectral images are used as data source to obtain homogenous objects by image segmentation firstly. Then based on spectral features,texture features,and geometrical features—9 features,a rule set is established. With the rule set as input,the GURLS classifier is used to detect cloud combined with threshold method. Applied on high resolution data with different time and scenarios,the method is compared with the pixel-based maximum likelihood method and SVM method. The result shows that the proposed method has a cloud extraction accuracy of over 95% and a Kappa coefficient of over 0.9.
引文
[1]李志军,王卫华,牛照东,等.城区红外遥感云层检测技术[J].中国激光,2012,39(11):121-126.
    [2] ZHU Z,WOODCOCK C E. Automated cloud,cloud shadow and snow detection in multitemporal landsat data:an algorithm designed specifically for monitoring land cover change[J]. Remote Sensing of Environment,2014(152):217-234.
    [3]李爱勤,王环东,王静怡,等.高分辨率遥感影像中云和似云目标的自动区分[J].测绘通报,2017(6):31-35.
    [4]谭凯,张永军,童心,等.国产高分辨率遥感卫星影像自动云检测[J].测绘学报,2016,45(5):581-591.
    [5] IRISH R R,BARKER J L,GOWARD S N,et al. Characterization of the Landsat-7 ETM+automated cloud-cover assessment(ACCA)algorithm[J]. Photogrammetric Engineering&Remote Sensing,2006,72(10):1179-1188.
    [6] ZVODY A M,MUTLOW C T,LIEWELLYNJONES D T. Cloud clearing over the ocean in the processing of data from the along-track scanning radiometer(ATSR)[J]. Journal of Atmospheric&Oceanic Technology,1998,17(5):595-615.
    [7] WILSON M J,OREOPOULOS L. Enhancing a simple MODIS cloud mask algorithm for the landsat data continuity mission[J]. IEEE Transactions on Geoscience and Remote Sensing,2013,51(2):723-731.
    [8] LIOU R J,AZIMI S,MAHOOD R,et al. Detection and classification of cloud data from geostationary satellite using artificial neural networks[C]∥Proceedings of IEEE International Conference on Neural Networks.Orlando:IEEE World Congress on Computational Intelligence,1994.
    [9]胡根生,陈长春,张学敏,等.LS-WTSVM的遥感多光谱影像云检测[J].安徽大学学报(自然科学版),2014,38(1):48-55.
    [10]殷亚秋,李家国,余涛,等.结合正则化最小二乘进行高空间分辨率四波段相机云识别[J].武汉大学学报(信息科学版),2016,41(2):190-195.
    [11] WILLHAUCK G,BENZ U,SIEGERT F. Semiautomatic classification procedures for fire monitoring using multitemporal SAR images and NOAA-AVHRR hotspot data[C]∥Proceedings of the 4th European Conference on Synthetic Aperture Radar(EUSAR). Berlin:VDEVerlag,2002.
    [12] CHEN S H,LIAO C C,YEH C H. On the emergent properties of artificial stock markets:some initial evidences[J]. Journal of Economic Behavior and Organization,2000,49(2):217-239.
    [13] LEBARON B. Evolution and time horizons in an agentbased stock market[J]. Social Science Electronic Publishing,2001,5(2):225-254.
    [14] CHEN S H,YEH C H.Evolving traders and the business school with genetic programming:a new architecture of the agent-based artificial stock market[J]. Journal of Economic Dynamics and Control,2001,25(3):363-393.
    [15]陈燕龙,祝成虎.基于Canny算子的边缘检测改进算法[J].计算机应用与软件,2008,25(8):51-53.
    [16]黄谊,任毅.基于阈值法和区域生长法的图像分割算法研究[J].电子测试,2012(10):23-25.
    [17] BAATZ M,SCHPE A. Multiresolution segmentation:an optimization approach for high quality multiscale image segmentation[J]. Journal of Photogrammetry and Remote Sensing,2000,58(3-4):12-23.
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