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Spectral band selection for ensemble classification of hyperspectral images with applications to agriculture and food safety.

机译:光谱带选择用于高光谱图像的整体分类,并应用于农业和食品安全。

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摘要

In this dissertation, an ensemble non-uniform spectral feature selection and a kernel density decision fusion framework are proposed for the classification of hyperspectral data using a support vector machine classifier. Hyperspectral data has more number of bands and they are always highly correlated. To utilize the complete potential, a feature selection step is necessary. In an ensemble situation, there are mainly two challenges: (1) Creating diverse set of classifiers in order to achieve a higher classification accuracy when compared to a single classifier. This can either be achieved by having different classifiers or by having different subsets of features for each classifier in the ensemble. (2) Designing a robust decision fusion stage to fully utilize the decision produced by individual classifiers.;This dissertation tests the efficacy of the proposed approach to classify hyperspectral data from different applications. Since these datasets have a small number of training samples with larger number of highly correlated features, conventional feature selection approaches such as random feature selection cannot utilize the variability in the correlation level between bands to achieve diverse subsets for classification. In contrast, the approach proposed in this dissertation utilizes the variability in the correlation between bands by dividing the spectrum into groups and selecting bands from each group according to its size. The intelligent decision fusion proposed in this approach uses the probability density of training classes to produce a final class label. The experimental results demonstrate the validity of the proposed framework that results in improvements in the overall, user, and producer accuracies compared to other state-of-the-art techniques. The experiments demonstrate the ability of the proposed approach to produce more diverse feature selection over conventional approaches.
机译:本文提出了一种基于支持向量机分类器的整体非均匀光谱特征选择和核密度决策融合框架。高光谱数据具有更多的波段,并且它们总是高度相关的。为了充分利用潜力,必须进行特征选择步骤。在整体情况下,主要存在两个挑战:(1)创建多样化的分类器集,以实现与单个分类器相比更高的分类精度。这可以通过对集合中的每个分类器使用不同的分类器或使用不同的特征子集来实现。 (2)设计了一个鲁棒的决策融合阶段,以充分利用各个分类器的决策。本论文测试了该方法对来自不同应用的高光谱数据进行分类的有效性。由于这些数据集的训练样本数量少且具有大量高度相关的特征,因此常规特征选择方法(例如随机特征选择)无法利用频段之间相关性级别的可变性来实现分类的不同子集。相比之下,本文提出的方法通过将频谱划分成组并根据其大小从每个组中选择频带来利用频带之间相关性的可变性。这种方法中提出的智能决策融合使用训练类的概率密度来生成最终类标签。实验结果证明了所提出框架的有效性,与其他最新技术相比,该框架可改善总体,用户和生产者的准确性。实验证明了所提出的方法能够产生比传统方法更多的特征选择的能力。

著录项

  • 作者

    Samiappan, Sathishkumar.;

  • 作者单位

    Mississippi State University.;

  • 授予单位 Mississippi State University.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 127 p.
  • 总页数 127
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:26

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