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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Orthogonal Subspace Projection-Based Go-Decomposition Approach to Finding Low-Rank and Sparsity Matrices for Hyperspectral Anomaly Detection
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Orthogonal Subspace Projection-Based Go-Decomposition Approach to Finding Low-Rank and Sparsity Matrices for Hyperspectral Anomaly Detection

机译:基于正交的子空间投影的去分解方法,用于找到高光谱异常检测的低级和稀疏矩阵

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摘要

Low-rank and sparsity-matrix decomposition (LRaSMD) has received considerable interests lately. One of effective methods for LRaSMD is called go decomposition (GoDec), which finds low-rank and sparse matrices iteratively subject to the predetermined low-rank matrix order m and sparsity cardinality k. This article presents an orthogonal subspace-projection (OSP) version of GoDec to be called OSPGoDec, which implements GoDec in an iterative process by a sequence of OSPs to find desired low-rank and sparse matrices. In order to resolve the issues of empirically determining p = m + j and k, the well-known virtual dimensionality (VD) is used to estimate p in conjunction with the Kuybeda et al. developed minimax-singular value decomposition (MX-SVD) in the maximum orthogonal complement algorithm (MOCA) to estimate k. Consequently, LRaSMD can be realized by implementing OSP-GoDec using p and k determined by VD and MX-SVD, respectively. Its application to anomaly detection demonstrates that the proposed OSP-GoDec coupled with VD and MX-SVD performs very effectively and better than the commonly used LRaSMD-based anomaly detectors.
机译:低级别和稀疏性 - 矩阵分解(LRASMD)最近已经获得了相当的兴趣。 LRASMD的有效方法之一被称为去分解(GODEC),其找到低等级和稀疏矩阵,迭代地受到预定的低秩矩阵顺序m和稀疏性基数k。本文介绍了一个正交的子空间投影(OSP)GODEC的名称为OSPGodec,它通过一系列OSPS实现了GODEC,以找到所需的低级别和稀疏矩阵。为了解决经验确定p = m + j和k的问题,众所周知的虚拟维度(Vd)用于与Kuybeda等人结合估计P.在最大正交补充算法(MOCA)中开发了最小的单数值分解(MX-SVD)以估计k。因此,可以通过分别使用由VD和MX-SVD确定的P和k实现OSP-GODEC来实现LRASMD。其对异常检测的应用表明,与VD和MX-SVD相结合的建议OSP-GoDec非常有效地表现出并且优于常用的基于最常用的基于的异常探测器。

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