高光谱图像分类的分割非负矩阵分解

Md. Hasanul Bari, Tanver Ahmed, M. I. Afjal, A. M. Nitu, Md. Palash Uddin, Md Abu Marjan
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摘要

遥感高光谱图像(HSI)由数百个狭窄的相邻光谱带组成。它携带了很多关于地球天体的重要信息。然而,所有恒指波段的使用导致更高的错误分类。波段缩减是解决这个问题的一个潜在的解决方案,其中特征选择和特征提取方法通常是为了减少波段而完成的。其中最常用的无监督特征提取技术是主成分分析(PCA)。但由于它只考虑数据的全局变化,未能从恒生指数中提取出局部的内在信息。这个问题可以通过分段PCA (SPCA)来解决,它通过将数据划分为高度相关的块来利用数据的全局和局部方差。此外,另一种无监督特征提取技术——非负矩阵分解(NMF)通过在低维子空间中逼近数据,也被应用于HSI。在本文中,我们提出了一种特征提取方法,称为分割非负矩阵分解(SNMF),对HSI数据的分割强相关块进行NMF。利用支持向量机分类器,将该方法与PCA、NMF和SPCA在印第安松数据集上的有效性进行了比较。实验结果表明,在所有类别的样本中,SNMF(89.00%)优于PCA(84.33%)、NMF(85.37%)和SPCA(87.59%)。
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Segmented Nonnegative Matrix Factorization for Hyperspectral Image Classification
The remote sensing hyperspectral image (HSI) consists of hundreds of narrow and adjoining spectral bands. It carries a lot of significant information about the earth's objects. However, the use of all HSI bands leads to higher misclassification. Band reduction is a potential solution to resolve this issue, where feature selection and feature extraction methods are commonly accomplished for the reduction of bands. One of the most commonly used unsupervised feature extraction techniques is the Principal Component Analysis (PCA). But it fails to bring out the local intrinsic information from the HSI as it ponders only the global variation of the data. This problem can be addressed by the Segmented PCA (SPCA) which exploits both the global and local variance of the data by partitioning it into highly correlated blocks. Beside, another unsupervised feature extraction technique named Nonnegative Matrix Factorization (NMF) is also applied for HSI by approximating the data in a low-dimensional subspace. In this paper, we propose a feature extraction method, named Segmented Nonnegative Matrix Factorization (SNMF), performing NMF on the segmented strongly correlated blocks of HSI data. The efficacy of the proposed method is compared with PCA, NMF, and SPCA on the Indian Pines dataset with a support vector machine classifier. The experimental result shows that SNMF (89.00%) outperforms PCA (84.33%), NMF (85.37%), and SPCA (87.59%) over all classes' samples.
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