DocumentCode :
3748608
Title :
Low-Rank Matrix Factorization under General Mixture Noise Distributions
Author :
Xiangyong Cao;Yang Chen;Qian Zhao;Deyu Meng;Yao Wang;Dong Wang;Zongben Xu
fYear :
2015
Firstpage :
1493
Lastpage :
1501
Abstract :
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 problem using L_1 norm and L_2 norm, which mainly deal with Laplacian and Gaussian noise, 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 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. An Expectation Maximization (EM) algorithm is also designed to infer the parameters involved in the proposed PMoEP model. The advantage of our method is demonstrated by extensive experiments on synthetic data, face modeling and hyperspectral image restoration.
Keywords :
"Robustness","Data models","Computer vision","Gaussian noise","Adaptation models","Algorithm design and analysis","Data mining"
Publisher :
ieee
Conference_Titel :
Computer Vision (ICCV), 2015 IEEE International Conference on
Electronic_ISBN :
2380-7504
Type :
conf
DOI :
10.1109/ICCV.2015.175
Filename :
7410532
Link To Document :
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