Nonconvex Nonsmooth Low-Rank Minimization via Iteratively Reweighted Nuclear Norm

October 23, 2015 ยท Declared Dead ยท ๐Ÿ› IEEE Transactions on Image Processing

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Authors Canyi Lu, Jinhui Tang, Shuicheng Yan, Zhouchen Lin arXiv ID 1510.06895 Category cs.LG: Machine Learning Cross-listed cs.CV, math.NA Citations 329 Venue IEEE Transactions on Image Processing Last Checked 3 months ago
Abstract
The nuclear norm is widely used as a convex surrogate of the rank function in compressive sensing for low rank matrix recovery with its applications in image recovery and signal processing. However, solving the nuclear norm based relaxed convex problem usually leads to a suboptimal solution of the original rank minimization problem. In this paper, we propose to perform a family of nonconvex surrogates of $L_0$-norm on the singular values of a matrix to approximate the rank function. This leads to a nonconvex nonsmooth minimization problem. Then we propose to solve the problem by Iteratively Reweighted Nuclear Norm (IRNN) algorithm. IRNN iteratively solves a Weighted Singular Value Thresholding (WSVT) problem, which has a closed form solution due to the special properties of the nonconvex surrogate functions. We also extend IRNN to solve the nonconvex problem with two or more blocks of variables. In theory, we prove that IRNN decreases the objective function value monotonically, and any limit point is a stationary point. Extensive experiments on both synthesized data and real images demonstrate that IRNN enhances the low-rank matrix recovery compared with state-of-the-art convex algorithms.
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