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A framework for object characterization and matching in multi- and hyperspectral imaging systems.

机译:多光谱和高光谱成像系统中对象表征和匹配的框架。

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摘要

The idea of shape has been a field of scientific study since the time of Galileo. Most shapes that have been studied until now have been those that are “conceivable” by the human mind. This has restricted the study of shape by the image processing community to the visible range of the spectrum (an otherwise very small range). Perception of shape in the realm of the spectrum outside of the visible range has not received much attention. However with the recent advancement in imaging systems (multi- and hyperspectral) that can capture images over a wide spectral range, it is only natural to expect this field to receive notice by the imaging community. In this work, the idea of “shape” in the multi- and hyperspectral imaging scenarios is studied and its paradigms explored. Notions of the hyperspectral cube are borrowed from the remote sensing community as a means of representation of this high dimensional data.; In this work, edges of two types are used, one that makes use of the vector valued data in the image and another that treats each spectral band individually. The edge-sets are used to extract spatio-spectral shape signatures of objects which are in turn used for extracting canonical views of objects and also to perform classification using three dimensionality reduction techniques, Principal Component Analysis, Independent Component Analysis and Non-negative Matrix Factorization. As an extension to edge-based decompositions, we also use view-based techniques for classification. The results obtained by using a combination of spatial and spectral information are compared with those resulting from conventional single-band techniques, showing considerable improvement.; Issues regarding noisy data have been addressed using two approaches—increasing the dimensionality of the eigensystem and estimating the new eigensystem under noisy conditions using approximations of results using perturbation theory. The former approach gives a measure of the number of basis vectors that need to be included additionally based upon the strength of the noise. It develops a system that adds dimensions (Noise Equivalent Dimensions) to the original eigensystem that compensates for the energy contributed by the noise. The latter approach determines the manner in which the eigenviews of an eigensystem change in the presence of noise by using first-order approximations from perturbation theory. Both approaches are compared using reconstruction error in the original and noisy data.
机译:自伽利略时代以来,形状的概念就一直是科学研究领域。到现在为止,大多数已被研究的形状都是人脑“可以想到的”形状。这将图像处理社区对形状的研究限制在光谱的可见范围内(否则范围很小)。在可见光范围之外的光谱领域对形状的感知尚未引起足够的重视。但是,随着可以在宽光谱范围内捕获图像的成像系统(多光谱和高光谱)的最新发展,很自然地期望这个领域会受到成像界的关注。在这项工作中,研究了多光谱和高光谱成像场景中的“形状”概念,并探讨了其范例。高光谱立方体的概念是从遥感界借来的,以此表示这种高维数据。在这项工作中,使用了两种类型的边缘,一种使用图像中的矢量值数据,另一种分别处理每个光谱带。边缘集用于提取对象的时空频谱形状特征,进而用于提取对象的规范视图,并使用三维降维技术(主成分分析,独立成分分析和非负矩阵分解)进行分类。 。作为基于边缘分解的扩展,我们还使用基于视图的技术进行分类。通过将空间和频谱信息相结合所获得的结果与常规单波段技术所获得的结果进行了比较,显示出很大的改进。已经使用两种方法解决了有关噪声数据的问题-增加特征系统的维数,并在噪声条件下使用摄动理论近似结果来估计新的特征系统。前一种方法基于噪声的强度,给出了需要额外包括的基本矢量数量的度量。它开发了一种向原始本征系统添加尺寸(噪声等效尺寸)的系统,以补偿噪声贡献的能量。后一种方法通过使用摄动理论的一阶逼近来确定本征系统的本征视图在存在噪声的情况下发生变化的方式。使用原始数据和嘈杂数据中的重构误差来比较这两种方法。

著录项

  • 作者

    Ramanath, Rajeev.;

  • 作者单位

    North Carolina State University.;

  • 授予单位 North Carolina State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 p.3444
  • 总页数 185
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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