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Iteratively Reweighted Minimax-Concave Penalty Minimization for Accurate Low-rank Plus Sparse Matrix Decomposition

Praveen Kumar Pokala, Raghu Vamshi Hemadri, Chandra Sekhar Seelamantula

2021IEEE Transactions on Pattern Analysis and Machine Intelligence36 citationsDOI

Abstract

-norm, respectively. Convex approximations are known to result in biased estimates, to overcome which, nonconvex regularizers such as weighted nuclear-norm minimization and weighted Schatten p-norm minimization have been proposed. However, works employing these regularizers have used heuristic weight-selection strategies. We propose weighted minimax-concave penalty (WMCP) as the nonconvex regularizer and show that it admits an equivalent representation that enables weight adaptation. Similarly, an equivalent representation to the weighted matrix gamma norm (WMGN) enables weight adaptation for the low-rank part. The optimization algorithms are based on the alternating direction method of multipliers technique. We show that the optimization frameworks relying on the two penalties, WMCP and WMGN, coupled with a novel iterative weight update strategy, result in accurate low-rank plus sparse matrix decomposition. The algorithms are also shown to satisfy descent properties and convergence guarantees. On the applications front, we consider the problem of foreground-background separation in video sequences. Simulation experiments and validations on standard datasets, namely, I2R, CDnet 2012, and BMC 2012 show that the proposed techniques outperform the benchmark techniques.

Topics & Concepts

MinificationMinimaxLow-rank approximationSparse matrixRank (graph theory)MathematicsAlgorithmPattern recognition (psychology)Matrix (chemical analysis)Matrix decompositionComputer scienceDecompositionArtificial intelligenceMathematical optimizationSparse approximationCombinatoricsEigenvalues and eigenvectorsMaterials scienceBiologyComposite materialQuantum mechanicsPhysicsHankel matrixGaussianEcologyMathematical analysisSparse and Compressive Sensing TechniquesAdvanced Image Processing TechniquesImage and Signal Denoising Methods
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