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The spectral similarity scale and its application to the classification of hyperspectral remote sensing data.

机译:光谱相似度尺度及其在高光谱遥感数据分类中的应用。

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摘要

Hyperspectral images have considerable information content and are becoming common. Analysis tools must keep up with the changing demands and opportunities posed by the new datasets. Many spectral image analysis algorithms depend on a scalar measure of spectral similarity or ‘spectral distance’ to provide an estimate of how closely two spectra resemble each other. Unfortunately, traditional spectral similarity measures are ambiguous in their distinction of similarity.; Traditional metrics can define a pair of spectra to be nearly identical mathematically yet visual inspection shows them to be spectroscopically dissimilar. This is because traditional spectral similarity metrics are not based on the definition of a vector (i.e. a line with magnitude and direction). These algorithms do not separately quantify both magnitude and direction differences. Three common algorithms used to measure the distance between remotely sensed reflectance spectra are Euclidean Distance, correlation coefficient, and Spectral Angle. Euclidean Distance primarily measures overall brightness differences but does not respond to the correlation (or lack thereof) between two spectra. The correlation coefficient is very responsive to differences in direction (i.e. spectral shape) but does not respond to brightness differences due to band-independent gain or offset factors. Spectral Angle is closely related mathematically to the correlation coefficient and is primarily responsive to differences in spectral shape. However, Spectral Angle does respond to brightness differences due to a uniform offset, which confounds the interpretation of the Spectral Angle value.; This thesis proposes the Spectral Similarity Scale (SSS) as an algorithm that objectively quantifies differences between reflectance spectra in both magnitude and direction dimensions (i.e. brightness and spectral shape). Therefore, the SSS is a fundamental improvement in the description of distance between two reflectance spectra. This thesis presents the SSS its rationale, definition, sensitivity, and limitations. In addition, it demonstrates the use of the SSS by discussing an unsupervised classification algorithm based on the SSS named ClaSSS. Finally, suggestions are made for future research concerning hyperspectral image analysis algorithms.
机译:高光谱图像具有大量的信息内容,并且正在变得普遍。分析工具必须跟上新数据集提出的不断变化的需求和机会。许多光谱图像分析算法都依赖于光谱相似度或“光谱距离”的标量度量来估计两个光谱之间的相似程度。不幸的是,传统的频谱相似性度量在它们的相似性区分上是模棱两可的。传统的度量标准可以将一对光谱定义为在数学上几乎相同,而目测检查显示它们在光谱上是不相似的。这是因为传统的频谱相似性度量标准不是基于矢量的定义(即具有幅度和方向的线)。这些算法没有分别量化幅度方向差异。用于测量遥感反射光谱之间距离的三种常见算法是欧氏距离,相关系数和光谱角。欧氏距离主要测量整体亮度差异,但不响应两个光谱之间的相关性(或缺乏相关性)。该相关系数对方向的差异(即,光谱形状)非常敏感,但是对与频带无关的增益或偏移因子所引起的亮度差异不敏感。光谱角在数学上与相关系数密切相关,并且主要响应光谱形状的差异。但是,“光谱角”确实会由于均匀偏移而对亮度差异做出响应,这混淆了“光谱角”值的解释。本文提出了一种光谱相似度标度(SSS)作为一种算法,可以客观地量化反射光谱之间在幅度和方向尺寸(即亮度和光谱形状)上的差异。因此,SSS是描述两个反射光谱之间距离的根本改进。本文介绍了SSS的原理,定义,敏感性和局限性。此外,它通过讨论基于SSS的名为ClaSSS的无监督分类算法来演示SSS的使用。最后,提出了有关高光谱图像分析算法的未来研究建议。

著录项

  • 作者

    Sweet, James Norman.;

  • 作者单位

    State University of New York College of Environmental Science and Forestry.;

  • 授予单位 State University of New York College of Environmental Science and Forestry.;
  • 学科 Engineering Environmental.; Environmental Sciences.; Mathematics.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境污染及其防治;环境科学基础理论;数学;遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:45:00

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