Litcius/Paper detail

Orthogonal Subspace Projection-Based Go-Decomposition Approach to Finding Low-Rank and Sparsity Matrices for Hyperspectral Anomaly Detection

Chein‐I Chang, Hongju Cao, Shuhan Chen, Xiaodi Shang, Chunyan Yu, Meiping Song

2020IEEE Transactions on Geoscience and Remote Sensing68 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Singular value decompositionProjection (relational algebra)Rank (graph theory)Subspace topologyCardinality (data modeling)Anomaly detectionAlgorithmMatrix decompositionMatrix (chemical analysis)MathematicsComputer sciencePattern recognition (psychology)CombinatoricsArtificial intelligenceEigenvalues and eigenvectorsData miningPhysicsQuantum mechanicsComposite materialMaterials scienceRemote-Sensing Image ClassificationSparse and Compressive Sensing TechniquesImage and Signal Denoising Methods