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Design and analysis of maximum simplex volume-based endmember extraction algorithms.

机译:设计和分析基于最大单纯形体的端成员提取算法。

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摘要

Endmember extraction is a fundamental task and has been found in many applications in hyperspectral data exploitation such as anomaly detection, spectral unmixing, classification, data compression, image analysis etc. Since an endmember is defined as a pure, idealized signature for a spectral class, it provides first hand information for image understanding and analysis. Many algorithms have been designed and developed for endmember extraction in the past. One of major criteria, maximum simplex volume (MSV) has been used for this purpose. One best well-known Endmember Extraction Algorithm (EEA) in this category is N-finder algorithm (N-FINDR) developed by Winter. However there are many issues arising in its practical implementation. The research proposed in this dissertation is to investigate and resolve these issues. As a result, N-FINDR has been either re-invented to derive new algorithms such as Simplex Growing Algorithm (SGA) and Random N-FINDR (RN-FINDR) or re-designed to better suit practical implementation such as SeQuential N-FINDR (SQ N-FINDR), SuCcessive N-FINDR (SC N-FINDR), Initialization-Driven N-FINDR (ID N-FINDR) and Causal N-FINDR. In order to substantiate all the algorithms proposed in this dissertation, synthetic image-based experiments are conducted for validation. To further demonstrate their utility in real applications two real hyperspectral image data sets are also performed for experiments. Finally, a comparative analysis between N-FINDR and other popular EEAs is also studied to explore their relationships.
机译:端成员提取是一项基本任务,并且已在高光谱数据开发的许多应用中找到,例如异常检测,光谱分解,分类,数据压缩,图像分析等。由于端成员被定义为光谱类别的纯净理想签名,它提供了用于图像理解和分析的第一手信息。过去已经设计和开发了许多算法用于端成员提取。主要标准之一是最大单形体积(MSV)已用于此目的。温特开发的N-finder算法(N-FINDR)是此类中最著名的端成员提取算法(EEA)。然而,在其实际实施中存在许多问题。本文提出的研究就是对这些问题进行研究和解决。结果,N-FINDR已被重新发明以衍生出新算法,例如单纯形增长算法(SGA)和随机N-FINDR(RN-FINDR),或者被重新设计以更好地适应实际实现,例如SeQuential N-FINDR (SQ N-FINDR),连续N-FINDR(SC N-FINDR),初始化驱动N-FINDR(ID N-FINDR)和因果N-FINDR。为了证实本文提出的所有算法,进行了基于合成图像的实验验证。为了进一步证明其在实际应用中的效用,还对实验使用了两个真实的高光谱图像数据集。最后,还对N-FINDR与其他流行的EEA之间的比较分析进行了研究,以探讨它们之间的关系。

著录项

  • 作者

    Wu, Chao-Cheng.;

  • 作者单位

    University of Maryland, Baltimore County.;

  • 授予单位 University of Maryland, Baltimore County.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 194 p.
  • 总页数 194
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:37:48

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