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Radar and multispectral image fusion options for improved land cover classification.

机译:雷达和多光谱图像融合选项可改善土地覆被分类。

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摘要

Investigators engaged in research utilizing remotely-sensed data are increasingly faced with a plethora of data sources and platforms that exploit different portions of the electromagnetic spectrum. Considerable efforts have focused on the application of these sources to the development of a better understanding of lithosphere, biosphere, and atmospheric systems. Many of these efforts have concentrated on the use of single sensors. More recently, some research efforts have turned to the fusion of sources in an effort to determine if different sensors and platforms can be combined to more effectively analyze or model the systems in question.;This study evaluates multisensor integration of Synthetic Aperture Radar (SAR) with Multispectral Imagery (MSI) data for land cover analysis and vegetation mapping. Three principle analytical issues are addressed in this investigation: the value of SAR collected at different incident angles, preclassification processing alternatives to improve fusion classification results, and the value of cross-season (dry and wet) data integration in a subtropical climate.;The study site for this research is Andros Island, the largest island in The Bahamas archipelago. Andros has a number of distinct plant communities ranging from saltwater marsh and mangroves to pine stands and hardwood coppices. Despite the island's size and proximity to the United States, it is largely uninhabited and has large expanses of minimally disturbed landscapes.;An empirical assessment of SAR filtering techniques, namely speckle suppression and texture analysis at various window sizes, is utilized to determine the most appropriate technique to apply when integrating SAR and MSI for land cover characterization. Multiple RADARSAT-1 SAR images were collected at various incident angles for wet and dry season conditions over the region of interest. Two Landsat Thematic Mapper-5 MSI datasets were also collected to coincide with the time periods of the SAR images.;A land cover classification process applied to the dry season and wet season MSI data achieved a total classification accuracy of 80.6% and 80.7% respectively. When combined into a single multiseason dataset the MSI data resulted in a total classification accuracy of 87.3%. SAR proved to be a valuable source of information especially when processed as a time series and with a speckle suppression algorithm applied. A 21-scene multitemporal SAR dataset achieved a total classification accuracy of 65.8%. When a classification was applied to the multitemporal dataset following speckle suppression, the resulting total classification accuracy was as high as 83.8% depending on the speckle algorithm and kernel applied.;While texture measures have been successfully utilized for integrating SAR and MSI data, in this study speckle suppression proved to be significantly more valuable. SAR collection parameters such as look direction (ascending or descending orbit) and incident angle did not prove to contain uniquely valuable characteristics. The highest total classification accuracy achieved involved a combination of two MSI datasets and a multitemporal SAR dataset processed to suppress speckle using a Gamma-Maximum A Posteriori (MAP) filter with a 9x9 kernel.;This study sought to investigate processing alternatives when fusing SAR and MSI data. While not all of the results met with expectations, this study does determine that SAR and MSI are complementary data sources. A combination of SAR and MSI provide unique and valuable results that can not be achieved by each variable used independently.
机译:从事利用遥感数据进行研究的研究人员越来越多地面临大量利用电磁频谱不同部分的数据源和平台。在将这些资源应用于更好地理解岩石圈,生物圈和大气系统的过程中,已经进行了大量的努力。这些努力中有许多集中在使用单个传感器上。最近,一些研究工作已转向源的融合,以确定是否可以组合使用不同的传感器和平台,以更有效地分析或建模相关系统。本研究评估了合成孔径雷达(SAR)的多传感器集成结合多光谱影像(MSI)数据进行土地覆盖分析和植被测绘。这项研究解决了三个主要的分析问题:在不同入射角收集的SAR值,改进融合分类结果的预分类处理方法以及在亚热带气候中跨季节(干湿)数据整合的价值。该研究的研究地点是安德罗斯岛,它是巴哈马群岛最大的岛屿。安德罗斯(Andros)有许多不同的植物群落,从咸水沼泽和红树林到松林和硬木林木。尽管该岛的大小和与美国的距离较近,但它基本上无人居住,并且大范围地散布着最小的干扰景观。;对SAR滤波技术的经验评估,即各种窗口大小的斑点抑制和纹理分析,被用来确定最大集成SAR和MSI进行土地覆盖特征描述时应采用的适当技术。在感兴趣区域的湿季和旱季条件下,以各种入射角收集了多个RADARSAT-1 SAR图像。还收集了两个Landsat Thematic Mapper-5 MSI数据集以与SAR图像的时间段相吻合;对干旱季节和雨季MSI数据进行的土地覆盖分类过程分别实现了80.6%和80.7%的总分类精度。将MSI数据合并为一个单一的多季节数据集后,其总分类精度为87.3%。 SAR被证明是有价值的信息来源,尤其是在按时间序列处理并应用斑点抑制算法时。 21个场景的多时间SAR数据集的总分类准确率达到65.8%。当对斑点进行抑制后将其应用于多时相数据集时,根据斑点算法和所应用的核,所得到的总分类精度高达83.8%。虽然纹理测量已成功地用于整合SAR和MSI数据,研究证明抑制斑点非常有价值。 SAR收集参数(如视线方向(上升或下降轨道)和入射角)没有被证明具有独特的有价值的特征。最高的总分类精度涉及两个MSI数据集和一个多时相SAR数据集的组合,该数据集使用具有9x9内核的Gamma-Maximum A Posteriori(MAP)滤波器处理以抑制斑点。 MSI数据。尽管并非所有结果都符合预期,但这项研究确实确定了SAR和MSI是互补的数据源。 SAR和MSI的组合提供了独特而有价值的结果,而每个单独使用的变量都无法实现。

著录项

  • 作者

    Villiger, Erwin J.;

  • 作者单位

    George Mason University.;

  • 授予单位 George Mason University.;
  • 学科 Geotechnology.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 235 p.
  • 总页数 235
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 地质学;遥感技术;
  • 关键词

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