首页> 外文学位 >Applying spectral mixture analysis (SMA) for soil information extraction on the airborne visible/infrared imaging spectrometer (AVIRIS) data.
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Applying spectral mixture analysis (SMA) for soil information extraction on the airborne visible/infrared imaging spectrometer (AVIRIS) data.

机译:应用光谱混合分析(SMA)提取机载可见/红外成像光谱仪(AVIRIS)数据中的土壤信息。

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摘要

The research objectives of this study were formulated to produce the soil spectral maps using spectral mixture analysis on the AVIRIS data of the Walnut Gulch Experimental Watershed, Tombstone, Arizona. To accomplish this objective the spectral characteristics of eight soils of this Watershed were determined considering the effect of the source of illumination/sensor viewing geometry, degree of wetness (dry vs wet), surface roughness, and the source of the spectra (field, sieved samples and lab) on the selection of image and reference endmembers. The scale effect of the source of spectra was also studied in connection with AVIRIS spectral response. The soils presented anisotropic behavior which varied inversely with the wavelength, and it was reduced under wet conditions. Loss of information occurred when moving from large scale data set (lab, sieved sample, and field spectra) to small scale data (AVIRIS).;Cluster analysis and factor analysis were used to extract information about how soil reference endmembers are grouped in relation to viewing angles, degree of wetness and the source of the spectra. Factor analysis was applied to identify the key set of bands that carried most of the information. Soil spectral classes varied as a result of scale effects, soil conditions (wet or dry), and viewing angles. Factor analysis showed that with four unique bands (located at 0.410, 1.310, 0.650, and 2.400 ;AVIRIS image was modeled using mixture analysis on the basis of image endmembers and reference endmembers. Based on the four dimensions of the AVIRIS data image endmembers were defined by three soil spectra (McAllister, Stronghold-3, and Graham) and by one spectra of green vegetation.;The shade fractions were separated from dark soils (Graham and Epitaph) on the basis of the spatial context. The target test identified at least seven reference endmembers in the AVIRIS scene of the Watershed however; mixture analysis failed in obtaining fraction images from these reference endmembers. Mixture analysis was able to produce fraction images with a relatively high error for a small set (3) of reference endmembers (McAllister and Graham soils, and walnut leaf). However when applied to a subset of pixel extracted from the AVIRIS image mixture analysis identified the reference endmembers and quantified their proportions.
机译:制定本研究的研究目标,是通过对亚利桑那州墓碑镇核桃谷实验流域的AVIRIS数据进行光谱混合分析得出土壤光谱图。为实现这一目标,考虑到照明/传感器观察几何形状,湿度(干湿对湿),表面粗糙度和光谱源(场,筛分)的影响,确定了该流域的八种土壤的光谱特性样本和实验室),以选择图像和参考端成员。还结合AVIRIS光谱响应研究了光谱源的比例效应。土壤表现出各向异性的行为,该行为与波长成反比,并且在潮湿条件下会降低。从大型数据集(实验室,筛分的样品和田间光谱)移至小规模数据(AVIRIS)时,会发生信息丢失。;使用聚类分析和因子分析来提取有关如何将土壤参考端基相对于土壤进行分组的信息视角,湿度和光谱来源。应用因子分析来确定携带大部分信息的关键波段集。土壤的光谱类别因水垢效应,土壤条件(潮湿或干燥)和视角而变化。因子分析表明,在四个独特的波段(分别位于0.410、1.310、0.650和2.400处);基于图像端成员和参考端成员的混合分析,对AVIRIS图像进行了建模,并根据AVIRIS数据图像的四个维度定义了端成员通过三个土壤光谱(McAllister,Stronghold-3和Graham)和一个绿色植被光谱;根据空间背景,将阴影部分与深色土壤(Graham和墓志铭)分开,目标测试至少可以识别出但是在分水岭的AVIRIS场景中有七个参考端成员;混合分析未能从这些参考端成员获得馏分图像。对于一小部分(3)的参考端成员(McAllister和Graham土壤和胡桃叶)。但是,当将其应用于从AVIRIS图像混合分析中提取的像素子集时,可以识别参考端成员并进行量化他们的比例。

著录项

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Agriculture Soil Science.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 1997
  • 页码 233 p.
  • 总页数 233
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:48:56

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