Low-rank Matrix Factorization under General Mixture Noise Distributions

01/06/2016
by   Xiangyong Cao, et al.
0

Many computer vision problems can be posed as learning a low-dimensional subspace from high dimensional data. The low rank matrix factorization (LRMF) represents a commonly utilized subspace learning strategy. Most of the current LRMF techniques are constructed on the optimization problems using L1-norm and L2-norm losses, which mainly deal with Laplacian and Gaussian noises, respectively. To make LRMF capable of adapting more complex noise, this paper proposes a new LRMF model by assuming noise as Mixture of Exponential Power (MoEP) distributions and proposes a penalized MoEP (PMoEP) model by combining the penalized likelihood method with MoEP distributions. Such setting facilitates the learned LRMF model capable of automatically fitting the real noise through MoEP distributions. Each component in this mixture is adapted from a series of preliminary super- or sub-Gaussian candidates. Moreover, by facilitating the local continuity of noise components, we embed Markov random field into the PMoEP model and further propose the advanced PMoEP-MRF model. An Expectation Maximization (EM) algorithm and a variational EM (VEM) algorithm are also designed to infer the parameters involved in the proposed PMoEP and the PMoEP-MRF model, respectively. The superseniority of our methods is demonstrated by extensive experiments on synthetic data, face modeling, hyperspectral image restoration and background subtraction.

READ FULL TEXT

page 1

page 8

page 9

page 10

page 11

research
01/01/2019

Adaptive Quantile Low-Rank Matrix Factorization

Low-rank matrix factorization (LRMF) has received much popularity owing ...
research
02/01/2017

Denoising Hyperspectral Image with Non-i.i.d. Noise Structure

Hyperspectral image (HSI) denoising has been attracting much research at...
research
05/18/2017

A General Model for Robust Tensor Factorization with Unknown Noise

Because of the limitations of matrix factorization, such as losing spati...
research
11/05/2018

Low-Rank Phase Retrieval via Variational Bayesian Learning

In this paper, we consider the problem of low-rank phase retrieval whose...
research
03/18/2022

Dencentralized learning in the presence of low-rank noise

Observations collected by agents in a network may be unreliable due to o...
research
04/21/2023

H2TF for Hyperspectral Image Denoising: Where Hierarchical Nonlinear Transform Meets Hierarchical Matrix Factorization

Recently, tensor singular value decomposition (t-SVD) has emerged as a p...
research
03/08/2019

General Convolutional Sparse Coding with Unknown Noise

Convolutional sparse coding (CSC) can learn representative shift-invaria...

Please sign up or login with your details

Forgot password? Click here to reset