首页> 外文学位 >Determination of classification accuracy for land use/cover types using LANDSAT-TM, SPOT-MSS and multipolarized and multi-channel synthetic aperture radar (SAR) data.
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Determination of classification accuracy for land use/cover types using LANDSAT-TM, SPOT-MSS and multipolarized and multi-channel synthetic aperture radar (SAR) data.

机译:使用LANDSAT-TM,SPOT-MSS和多极化和多通道合成孔径雷达(SAR)数据确定土地利用/覆盖类型的分类精度。

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摘要

The primary objective of this study was to determine the degree to which modern SAR systems can be used to obtain information about the Earth's vegetative resources. Information obtainable from microwave synthetic aperture radar (SAR) data was compared with that obtainable from LANDSAT-TM and SPOT data. Three hypotheses were tested: (a) Classification of land cover/use from SAR data can be accomplished on a pixel-by-pixel basis with the same overall accuracy as from LANDSAT-TM and SPOT data. (b) Classification accuracy for individual land cover/use classes will differ between sensors. (c) Combining information derived from optical and SAR data into an integrated monitoring system will improve overall and individual land cover/use class accuracies.; The study was conducted with three data sets for the Sleeping Bear Dunes test site in the northwestern part of Michigan's lower peninsula, including an October 1982 LANDSAT-TM scene, a June 1989 SPOT scene and C-, L- and P-Band radar data from the Jet Propulsion Laboratory AIRSAR. Reference data were derived from the Michigan Resource Information System (MIRIS) and available color infrared aerial photos. Classification and rectification of data sets were done using ERDAS Image Processing Programs. Classification algorithms included Maximum Likelihood, Mahalanobis Distance, Minimum Spectral Distance, ISODATA, Parallelepiped, and Sequential Cluster Analysis. Classified images were rectified as necessary so that all were at the same scale and oriented north-up. Results were analyzed with contingency tables and percent correctly classified (PCC) and Cohen's Kappa (CK) as accuracy indices using CSLANT and ImagePro programs developed for this study.; Accuracy analyses were based upon a 1.4 by 6.5 km area with its long axis east-west. Reference data for this subscene total 55,770 15 by 15 m pixels with sixteen cover types, including seven level III forest classes, three level III urban classes, two level II range classes, two water classes, one wetland class and one agriculture class. An initial analysis was made without correcting the 1978 MIRIS reference data to the different dates of the TM, SPOT and SAR data sets. In this analysis, highest overall classification accuracy (PCC) was 87% with the TM data set, with both SPOT and C-Band SAR at 85%, a difference statistically significant at the 0.05 level. When the reference data were corrected for land cover change between 1978 and 1991, classification accuracy with the C-Band SAR data increased to 87%.; Classification accuracy differed from sensor to sensor for individual land cover classes, Combining sensors into hypothetical multi-sensor systems resulted in higher accuracies than for any single sensor. Combining LANDSAT-TM and C-Band SAR yielded an overall classification accuracy (PCC) of 92%.; The results of this study indicate that C-Band SAR data provide an acceptable substitute for LANDSAT-TM or SPOT data when land cover information is desired of areas where cloud cover obscures the terrain. Even better results can be obtained by integrating TM and C-Band SAR data into a multi-sensor system.
机译:这项研究的主要目的是确定现代SAR系统可用于获取有关地球植物资源信息的程度。将从微波合成孔径雷达(SAR)数据获得的信息与从LANDSAT-TM和SPOT数据获得的信息进行了比较。对三个假设进行了检验:(a)可以根据逐个像素完成SAR数据对土地覆盖/土地利用的分类,其总体精度与LANDSAT-TM和SPOT数据相同。 (b)各个土地覆盖物/用途类别的分类精度在传感器之间会有所不同。 (c)将来自光学和合成孔径雷达数据的信息结合到一个综合监测系统中,将改善总体和个人土地覆盖/使用类别的准确性。该研究使用了密歇根州下部半岛西北部的“睡熊沙丘”试验场的三个数据集,包括1982年10月的LANDSAT-TM场景,1989年6月的SPOT场景以及C,L和P波段雷达数据。来自喷气推进实验室AIRSAR。参考数据来自密歇根州资源信息系统(MIRIS)和可用的彩色红外航拍照片。数据集的分类和校正是使用ERDAS图像处理程序完成的。分类算法包括最大似然,马氏距离,最小光谱距离,ISODATA,平行六面体和顺序聚类分析。分类的图像会根据需要进行校正,以使所有图像的比例相同且朝北。使用本研究开发的CSLANT和ImagePro程序,通过列联表和正确分类百分比(PCC)和科恩卡帕(CK)作为准确性指标来分析结果。精度分析基于长轴东西向的1.4 x 6.5 km区域。该次场景的参考数据总计55770 15 x 15 m像素,具有16种覆盖类型,包括7种III级森林等级,3种III级城市等级,2种II级范围等级,2种水等级,1种湿地等级和1种农业等级。进行了初步分析,没有将1978年MIRIS参考数据校正为TM,SPOT和SAR数据集的不同日期。在此分析中,TM数据集的最高总体分类准确度(PCC)为87%,SPOT和C波段SAR均为85%,差异在统计学上为0.05。当对1978年至1991年之间的土地覆被变化的参考数据进行校正时,使用C波段SAR数据进行分类的准确性提高到87%。各个土地覆盖类别的传感器之间的分类精度有所不同,将传感器组合到假设的多传感器系统中,其准确性要高于任何单个传感器。结合LANDSAT-TM和C波段SAR得出的总体分类准确度(PCC)为92%。这项研究的结果表明,当需要云层遮盖地形区域的土地覆盖信息时,C波段SAR数据可以替代LANDSAT-TM或SPOT数据。通过将TM和C波段SAR数据集成到多传感器系统中,可以获得更好的结果。

著录项

  • 作者

    Dondurur, Mehmet.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Physics Atmospheric Science.; Physical Geography.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 1994
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大气科学(气象学);自然地理学;遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:49:47

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