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Adaptive Similarity Measures for Material Identification in Hyperspectral Imagery.

机译:用于高光谱影像中材料识别的自适应相似性度量。

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摘要

Remotely-sensed hyperspectral imagery has become one the most advanced tools for analyzing the processes that shape the Earth and other planets. Effective, rapid analysis of high-volume, high-dimensional hyperspectral image data sets demands efficient, automated techniques to identify signatures of known materials in such imagery. In this thesis, we develop a framework for automatic material identification in hyperspectral imagery using adaptive similarity measures. We frame the material identification problem as a multiclass similarity-based classification problem, where our goal is to predict material labels for unlabeled target spectra based upon their similarities to source spectra with known material labels. As differences in capture conditions affect the spectral representations of materials, we divide the material identification problem into intra-domain (i.e., source and target spectra captured under identical conditions) and inter-domain (i.e., source and target spectra captured under different conditions) settings.;The first component of this thesis develops adaptive similarity measures for intra-domain settings that measure the relevance of spectral features to the given classification task using small amounts of labeled data. We propose a technique based on multiclass Linear Discriminant Analysis (LDA) that combines several distinct similarity measures into a single hybrid measure capturing the strengths of each of the individual measures. We also provide a comparative survey of techniques for low-rank Mahalanobis metric learning, and demonstrate that regularized LDA yields competitive results to the state-of-the-art, at substantially lower computational cost.;The second component of this thesis shifts the focus to inter-domain settings, and proposes a multiclass domain adaptation framework that reconciles systematic differences between spectra captured under similar, but not identical, conditions. Our framework computes a similarity-based mapping that captures structured, relative relationships between classes shared between source and target domains, allowing us apply a classifier trained using labeled source spectra to classify target spectra. We demonstrate improved domain adaptation accuracy in comparison to recently-proposed multitask learning and manifold alignment techniques in several case studies involving state-of-the-art synthetic and real-world hyperspectral imagery.
机译:遥感高光谱图像已经成为分析地球和其他行星形成过程的最先进工具之一。有效,快速地分析高容量,高维高光谱图像数据集需要有效的自动化技术,以识别此类图像中已知材料的特征。在本文中,我们开发了一种使用自适应相似性度量的高光谱图像中自动材料识别的框架。我们将材料识别问题归结为基于多类相似度的分类问题,我们的目标是基于未标记目标光谱与已知材料标签的源光谱的相似度来预测材料标签。由于捕获条件的差异会影响材料的光谱表示,因此我们将材料识别问题分为域内(即,在相同条件下捕获的源和目标光谱)和域间(即,在不同条件下捕获的源和目标光谱)本文的第一部分为域内设置开发了自适应相似性度量,该度量使用少量标记数据来测量光谱特征与给定分类任务的相关性。我们提出了一种基于多类线性判别分析(LDA)的技术,该技术将几个不同的相似性度量组合到一个混合度量中,从而捕获了各个度量的优势。我们还对低阶Mahalanobis度量学习的技术进行了比较调查,并证明正规化的LDA以相当低的计算成本产生了与最新技术相比具有竞争性的结果。到域间设置,并提出了一个多类域适应框架,该框架可以调和在相似但不相同的条件下捕获的光谱之间的系统差异。我们的框架计算出一个基于相似度的映射,该映射捕获源域和目标域之间共享的类之间的结构化,相对关系,从而使我们可以应用使用标记的源光谱训练的分类器来对目标光谱进行分类。与最近提出的多任务学习和流形对准技术相比,我们在涉及最先进的合成和现实高光谱图像的几个案例研究中证明了改进的域自适应精度。

著录项

  • 作者

    Bue, Brian D.;

  • 作者单位

    Rice University.;

  • 授予单位 Rice University.;
  • 学科 Engineering Electronics and Electrical.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 266 p.
  • 总页数 266
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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