Title :
Robust Subspace Clustering via Smoothed Rank Approximation
Author :
Zhao Kang ; Chong Peng ; Qiang Cheng
Author_Institution :
Comput. Sci. Dept., Southern Illinois Univ., Carbondale, IL, USA
Abstract :
Matrix rank minimizing subject to affine constraints arises in many application areas, ranging from signal processing to machine learning. Nuclear norm is a convex relaxation for this problem which can recover the rank exactly under some restricted and theoretically interesting conditions. However, for many real-world applications, nuclear norm approximation to the rank function can only produce a result far from the optimum. To seek a solution of higher accuracy than the nuclear norm, in this letter, we propose a rank approximation based on Logarithm-Determinant. We consider using this rank approximation for subspace clustering application. Our framework can model different kinds of errors and noise. Effective optimization strategy is developed with theoretical guarantee to converge to a stationary point. The proposed method gives promising results on face clustering and motion segmentation tasks compared to the state-of-the-art subspace clustering algorithms.
Keywords :
approximation theory; determinants; image motion analysis; pattern clustering; affine constraint; convex relaxation; face clustering; logarithm-determinant; machine learning; motion segmentation; nuclear norm approximation; optimization strategy; rank function; robust subspace clustering; signal processing; smoothed rank approximation; Approximation algorithms; Approximation methods; Clustering algorithms; Linear programming; Minimization; Optimization; Signal processing algorithms; Matrix rank minimization; nonconvex optimization; nuclear norm; subspace clustering;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2015.2460737