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Novel two dimensional singular spectrum analysis for effective feature extraction and data classification in hyperspectral imaging

机译:用于高光谱成像中有效特征提取和数据分类的新型二维奇异谱分析

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摘要

Feature extraction is of high importance for effective data classification in hyperspectral imaging (HSI). Considering the high correlation among band images, spectral-domain feature extraction is widely employed. For effective spatial information extraction, a 2-D extension to singular spectrum analysis (SSA), a recent technique for generic data mining and temporal signal analysis, is proposed. With 2D-SSA applied to HSI, each band image is decomposed into varying trend, oscillations and noise. Using the trend and selected oscillations as features, the reconstructed signal, with noise highly suppressed, becomes more robust and effective for data classification. Three publicly available data sets for HSI remote sensing data classification are used in our experiments. Comprehensive results using a support vector machine (SVM) classifier have quantitatively evaluated the efficacy of the proposed approach. Benchmarked with several state-of-the-art methods including 2-D empirical mode decomposition (2D-EMD), it is found that our proposed 2D-SSA approach generates the best results in most cases. Unlike 2D-EMD which requires sequential transforms to obtain detailed decomposition, 2D-SSA extracts all components simultaneously. As a result, the executive time in feature extraction can also be dramatically reduced. The superiority in terms of enhanced discrimination ability from 2D-SSA is further validated when a relatively weak classifier, k-nearest neighbor (k-NN), is used for data classification. In addition, the combination of 2D-SSA with 1D-PCA (2D-SSA-PCA) has generated the best results among several other approaches, which has demonstrated the great potential in combining 2D-SSA with other approaches for effective spatial-spectral feature extraction and dimension reduction in HSI.
机译:特征提取对于高光谱成像(HSI)中的有效数据分类非常重要。考虑到频带图像之间的高度相关性,广泛使用了谱域特征提取。为了有效地进行空间信息提取,提出了将二维扩展到奇异频谱分析(SSA),这是一种用于通用数据挖掘和时间信号分析的最新技术。通过将2D-SSA应用于HSI,每个波段图像都将分解为变化的趋势,振荡和噪声。使用趋势和选定的振荡作为特征,具有高度抑制噪声的重构信号对于数据分类变得更加健壮和有效。我们的实验中使用了三个用于HSI遥感数据分类的公开数据集。使用支持向量机(SVM)分类器的综合结果已定量评估了所提出方法的有效性。以包括2-D经验模式分解(2D-EMD)在内的几种最新方法为基准,发现我们提出的2D-SSA方法在大多数情况下产生最佳结果。与需要顺序变换以获得详细分解的2D-EMD不同,2D-SSA同时提取所有分量。结果,特征提取中的执行时间也可以大大减少。当使用相对较弱的分类器k最近邻(k-NN)进行数据分类时,就进一步增强了从2D-SSA的辨别能力方面的优势。此外,将2D-SSA与1D-PCA(2D-SSA-PCA)组合使用还产生了其他几种方法中的最佳效果,这证明了将2D-SSA与其他方法组合以实现有效空间光谱特征的巨大潜力HSI中的提取和降维。

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