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Integrating visible, near infrared and short wave infrared hyperspectral and multispectral thermal imagery for geological mapping at Cuprite, Nevada.

机译:整合可见,近红外和短波红外高光谱和多光谱热成像仪,以进行内华达州库珀特的地质填图。

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摘要

Visible, near infrared (VNIR), and short wave infrared (SWIR) hyperspectral and thermal infrared (TIR) multispectral remote sensing have become potential tool for geological mapping. In this dissertation, a series of studies were carried out to investigate the potential impact of combining VNIR/SWIR hyperspectral and TIR multispectral data for surface geological mapping. First, a series of simulated data sets based on the characteristics of hyperspectral AVIRIS and multispectral TIR MASTER sensors was created from surface reflectance and emissivity library spectra. Five common used classification methods including minimum distance, maximum likelihood, spectral angle mapper (SAM), spectral feature fitting (SFF), and binary encoding were applied to these simulated data sets to test the hypothesis. It was found that most methods applied to the combined data actually obtained improvement in overall accuracy of classification by comparison of the results to the simulated AVIRIS data or TIR MASTER alone. And some minerals and rocks with strong spectral features got a marked increase in classification accuracy. Second, two real data sets such as AVIRIS and MASTER of Cuprite, Nevada were used. Four classification methods were each applied to AVIRIS, MASTER, and a combined set. The results of these classifications confirmed most findings from the simulated data analyses. Most silicate bearing rocks achieved great improvement in classification accuracy with the combined data. SFF applied to the combination of AVIRIS with MASTER TIR data are especially valuable for identification of silicified alteration and quartzite sandstone which exhibit strong distinctive absorption features in the TIR region. SAM showed some advantages over SFF in dealing with multiple broad band TIR data, obtaining higher accuracy in discriminating low albedo volcanic rocks and limestone which do not have strong characteristic absorption features in the TIR region. One of the main objectives of these studies is to develop an automated classification algorithm which is effective for the analysis of VNIR/SWIR hyperspectral and TIR multispectral data. A rule based system was constructed to draw the strengths of disparate wavelength regions and different algorithms for geological mapping.
机译:可见,近红外(VNIR)和短波红外(SWIR)高光谱和热红外(TIR)多光谱遥感已成为地质制图的潜在工具。本文针对VNIR / SWIR高光谱和TIR多光谱数据相结合对地表地质制图的潜在影响进行了一系列研究。首先,从表面反射率和发射率库光谱创建了一系列基于高光谱AVIRIS和多光谱TIR MASTER传感器特性的模拟数据集。对这些模拟数据集应用了五种常用的分类方法,包括最小距离,最大似然,光谱角度映射器(SAM),光谱特征拟合(SFF)和二进制编码,以检验假设。通过将结果与模拟的AVIRIS数据或单独的TIR MASTER进行比较,发现大多数应用于组合数据的方法实际上都提高了分类的整体准确性。一些具有强光谱特征的矿物和岩石的分类准确度显着提高。其次,使用了两个真实数据集,例如内华达州Cuprite的AVIRIS和MASTER。四种分类方法分别应用于AVIRIS,MASTER和组合集。这些分类的结果证实了来自模拟数据分析的大多数发现。结合数据,大多数含硅酸盐的岩石在分类精度上都取得了很大的进步。将SFF用于AVIRIS和MASTER TIR数据的结合对于识别硅化蚀变和石英岩砂岩特别有价值,这些石英化岩和石英岩砂岩在TIR区域具有很强的独特吸收特征。 SAM在处理多个宽带TIR数据方面显示出优于SFF的一些优势,在区分TIR区域中没有强特征吸收特征的低反照率火山岩和石灰石方面获得了更高的准确度。这些研究的主要目的之一是开发一种对VNIR / SWIR高光谱和TIR多光谱数据进行分析有效的自动分类算法。构建了一个基于规则的系统来绘制不同波长区域的强度以及用于地质映射的不同算法。

著录项

  • 作者

    Chen, Xianfeng.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Geology.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 地质学;遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:41:57

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