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Information-theoretic feature selection with segmentation-based folded principal component analysis (PCA) for hyperspectral image classification

机译:具有基于分段的折叠主成分分析(PCA)的信息 - 理论特征选择,用于高光谱图像分类

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摘要

Hyperspectral image (HSI) usually holds information of land cover classes as a set of many contiguous narrow spectral wavelength bands. For its efficient thematic mapping or classification, band (feature) reduction strategies through Feature Extraction (FE) and/or Feature Selection (FS) methods for finding the intrinsic bands' information are typically applied. Principal Component Analysis (PCA) is a frequently employed unsupervised linear FE method whereas cumulative-variance accumulation is used for selecting top features from PCA data. However, PCA can fail to extract intrinsic structure of HSI due to global variance consideration and domination by visible and near infrared bands while cumulative-variance accumulation has no capability to exploit non-linear relationships among the transformed features produced by PCA-based FE methods. Consequently, we propose an information theoretic normalized Mutual Information (nMI)-based minimum Redundancy Maximum Relevance (mRMR) non-linear measure to select the intrinsic features from the transformed space of our previously proposed Segmented-Folded-PCA (Seg-Fol-PCA) and Spectrally Segmented-Folded-PCA (SSeg-Fol-PCA) FE methods. We extensively analyse the effectiveness of the proposed unsupervised FE and supervised FS combinations Seg-Fol-PCA-mRMR and SSeg-Fol-PCA-mRMR with that of PCA-based existing linear and non-linear state-of-the-art methods. In addition, cumulative variance-based top features pick-up strategy is considered with all FE methods and Renyi quadratic entropy-based FS is used with Kernel Entropy Component Analysis (Ker-ECA). The experimental results illustrate that SSeg-Fol-PCA-mRMR and Seg-Fol-PCA-mRMR obtain highest classification result e.g. 95.39% and 95.03% respectively for agricultural Indian Pines HSI, and 96.58% and 95.30% respectively for urban Washington DC Mall HSI while the classification accuracies using all original features of the HSIs are 70.28% and 91.90% respectively. Moreover, the proposed SSeg-Fol-PCA-mRMR and Seg-Fol-PCA-mRMR outperform all investigated combinations of FE and FS using the real HSI datasets.
机译:高光谱图像(HSI)通常将陆地覆盖类的信息作为一组许多连续的窄谱波长带。对于其有效的主题映射或分类,通常应用通过特征提取(FE)和/或特征选择(FS)方法的频带(特征)减少策略用于查找内部频带信息的方法。主成分分析(PCA)是常用的无监督线性FE方法,而累积方差累积用于从PCA数据中选择顶部特征。然而,由于全球方差考虑和通过可见和近红外条带统治,PCA可能无法提取HSI的内在结构,而累积方差累积没有能力利用由PCA的FE方法产生的转换特征之间的非线性关系。因此,我们提出了一种信息理论标准化互信息(NMI),基本的最小冗余最大相关性(MRMR)非线性度量,以选择来自先前提出的分段折叠式PCA的变换空间的内部特征(SEG-FOL-PCA )和光谱分段折叠 - PCA(SSEG-FOL-PCA)FE方法。我们广泛地分析了拟议的无监督FS和监督FS组合SEG-FOL-PCA-MRMR和SSEG-FOL-PCA-MRMR的有效性,其基于PCA的现有线性和非线性最先进的方法。此外,基于累积方差的顶部特征拾取策略被认为是所有FE方法,并且基于仁维二次熵的FS都与内核熵分量分析(KER-ECA)一起使用。实验结果说明SSEG-FOL-PCA-MRMR和SEG-FOL-PCA-MRMR获得最高分类结果。农业印度松树HSI分别为95.39%和95.03%,分别为96.58%和95.30%,分别为城市华盛顿特区,同时使用HSIS的所有原始特征的分类精度分别为70.28%和91.90%。此外,所提出的SSEG-FOL-PCA-MRMR和SEG-FOL-PCA-MRMR使用真实的HSI数据集优于FE和FS的所有调查组合。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第2期|286-321|共36页
  • 作者单位

    Deakin Univ Sch IT Geelong Vic 3220 Australia|Hajee Mohammad Danesh Sci & Technol Univ Dept Comp Sci & Engn Dinajpur Bangladesh;

    Rajshahi Univ Engn & Technol Dept Comp Sci & Engn Rajshahi Bangladesh;

    Hajee Mohammad Danesh Sci & Technol Univ Dept Comp Sci & Engn Dinajpur Bangladesh;

    Rajshahi Univ Engn & Technol Dept Comp Sci & Engn Rajshahi Bangladesh;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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