Title :
Robust Matrix Factorization with Unknown Noise
Author :
Deyu Meng ; De la Torre, Fernando
Abstract :
Many problems in computer vision can be posed as recovering a low-dimensional subspace from high-dimensional visual data. Factorization approaches to low-rank subspace estimation minimize a loss function between the observed measurement matrix and a bilinear factorization. Most popular loss functions include the L1 and L2 losses. While L1 is optimal for Laplacian distributed noise, L2 is optimal for Gaussian noise. However, real data is often corrupted by an unknown noise distribution, which is unlikely to be purely Gaussian or Laplacian. To address this problem, this paper proposes a low-rank matrix factorization problem with a Mixture of Gaussians (MoG) noise. The MoG model is a universal approximator for any continuous distribution, and hence is able to model a wider range of real noise distributions. The parameters of the MoG model can be estimated with a maximum likelihood method, while the subspace is computed with standard approaches. We illustrate the benefits of our approach in extensive synthetic, structure from motion, face modeling and background subtraction experiments.
Keywords :
Gaussian noise; computer vision; matrix decomposition; maximum likelihood estimation; Gaussian noise; L1 losses; L2 losses; Laplacian distributed noise; MoG model; background subtraction; bilinear factorization; computer vision; face modeling; factorization approaches; high-dimensional visual data; loss function; low-dimensional subspace; low-rank matrix factorization problem; low-rank subspace estimation; maximum likelihood method; measurement matrix; mixture of Gaussians; noise distribution; noise model; robust matrix factorization; universal approximator; unknown noise; Computational modeling; Face; Gaussian noise; Laplace equations; Principal component analysis; Robustness;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCV.2013.169