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Sparse nonnegative matrix underapproximation and its application to hyperspectral image analysis

机译:稀疏非负矩阵欠逼近及其在高光谱图像分析中的应用

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Dimensionality reduction techniques such as principal component analysis (PCA) are powerful tools for the analysis of high-dimensional data. In hyperspectral image analysis, nonnegativity of the data can be taken into account, leading to an additive linear model called nonnegative matrix factorization (NMF), which improves interpretability of the decomposition. Recently, another technique based on under-approximations (NMU) has been introduced, which allows the extraction of features in a recursive way, such as PCA, but preserving nonnegativity, such as NMF. However, for difficult hyperspectral datasets, even NMU can mix some materials together, and is therefore not able to separate of all materials properly for accurate target identification. In this paper we introduce sparse NMU by adding a sparsity constraint on the abundance matrix and use it to extract materials individually in a more efficient way than NMU. This is experimentally demonstrated on a HYDICE image of the San Diego airport.
机译:降维技术(例如主成分分析(PCA))是用于分析高维数据的强大工具。在高光谱图像分析中,可以考虑数据的非负性,从而形成称为非负矩阵因式分解(NMF)的加性线性模型,该模型可提高分解的可解释性。最近,引入了另一种基于欠逼近度(NMU)的技术,该技术允许以递归方式提取特征(例如PCA),但保留非负性(例如NMF)。但是,对于困难的高光谱数据集,即使NMU也会将某些材料混合在一起,因此无法正确地分离所有材料以进行准确的目标识别。在本文中,我们通过在丰度矩阵上添加稀疏约束来介绍稀疏NMU,并使用稀疏NMU以比NMU更有效的方式分别提取物料。这是在圣地亚哥机场的HYDICE影像上通过实验证明的。

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