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Improving the performance of hyperspectral target detection.

机译:改善高光谱目标检测的性能。

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摘要

This dissertation develops new approaches for improving the performance of hyperspectral target detection. Different aspects of hyperspectral target detection are reviewed and studied to effectively distinguish target features from background interference. The contributions of this dissertation are detailed as follows.;1) Propose an adaptive background characterization method that integrates region segmentation with target detection. In the experiments, not only unstructured matched filter based detectors are considered, but also two hybrid detectors combining fully constrained least squared abundance estimation with statistic test (i.e., adaptive matched subspace detector and adaptive cosine/coherent detector) are investigated. The experimental results demonstrate that using local adaptive background characterization, background clutters can be better suppressed than the original algorithms with global characterization.;2) Propose a new approach to estimate abundance fractions based on the linear spectral mixture model for hybrid structured and unstructured detectors. The new approach utilizes the sparseness constraint to estimate abundance fractions, and achieves better performance than the popular non-negative and fully constrained methods in the situations when background endmember spectra are not accurately acquired or estimated, which is very common in practical applications. To improve the dictionary incoherence, the use of band selection is proposed to improve the sparseness constrained linear unmixing.;3) Propose random projection based dimensionality reduction and decision fusion approach for detection improvement. Such a data independent dimensionality reduction process has very low computational cost, and it is capable of preserving the original data structure. Target detection can be robustly improved by decision fusion of multiple runs of random projection. A graphics processing unit (GPU) parallel implementation scheme is developed to expedite the overall process.;4) Propose nonlinear dimensionality reduction approaches for target detection. Auto-associative neural network-based Nonlinear Principal Component Analysis (NLPCA) and Kernel Principal Component Analysis (KPCA) are applied to the original data to extract principal components as features for target detection. The results show that NLPCA and KPCA can efficiently suppress trivial spectral variations, and perform better than the traditional linear version of PCA in target detection. Their performance may be even better than the directly kernelized detectors.
机译:本文为提高高光谱目标检测性能开发了新的方法。审查和研究高光谱目标检测的不同方面,以有效地区分目标特征与背景干扰。论文的主要工作和成果如下:1)提出了一种将区域分割与目标检测相结合的自适应背景特征描述方法。在实验中,不仅考虑了基于非结构化匹配滤波器的检测器,而且还研究了将完全约束的最小二乘丰度估计与统计检验相结合的两个混合检测器(即,自适应匹配子空间检测器和自适应余弦/相干检测器)。实验结果表明,使用局部自适应背景特征可以比具有全局特征的原始算法更好地抑制背景杂波。; 2)提出了一种基于线性光谱混合模型的丰度分数估计方法,用于混合结构化和非结构化探测器。这种新方法利用稀疏约束来估计丰度分数,并且在背景端成员光谱无法准确获取或估计的情况下,与流行的非负完全约束方法相比,它具有更好的性能,这在实际应用中非常普遍。为了提高字典的不一致性,提出了利用谱带选择的方法来改善稀疏约束的线性解混。3)提出了基于随机投影的降维和决策融合的方法来提高检测效率。这种与数据无关的降维处理具有非常低的计算成本,并且能够保留原始数据结构。通过多次随机投影的决策融合,可以稳健地改善目标检测。开发了图形处理单元(GPU)并行实现方案以加快整个过程。; 4)提出了用于目标检测的非线性降维方法。基于自动关联神经网络的非线性主成分分析(NLPCA)和内核主成分分析(KPCA)应用于原始数据,以提取主成分作为目标检测的特征。结果表明,NLPCA和KPCA可以有效地抑制微小的光谱变化,并且在目标检测中比传统的线性PCA更好。它们的性能甚至可能比直接核化的检测器更好。

著录项

  • 作者

    Ma, Ben.;

  • 作者单位

    Mississippi State University.;

  • 授予单位 Mississippi State University.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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