DocumentCode
1174220
Title
Dictionary Learning for Sparse Approximations With the Majorization Method
Author
Yaghoobi, Mehrdad ; Blumensath, Thomas ; Davies, Mike E.
Author_Institution
Digital Commun. & the Joint Res. Inst. for Signal & Image Process., Edinburgh Univ., Edinburgh
Volume
57
Issue
6
fYear
2009
fDate
6/1/2009 12:00:00 AM
Firstpage
2178
Lastpage
2191
Abstract
In order to find sparse approximations of signals, an appropriate generative model for the signal class has to be known. If the model is unknown, it can be adapted using a set of training samples. This paper presents a novel method for dictionary learning and extends the learning problem by introducing different constraints on the dictionary. The convergence of the proposed method to a fixed point is guaranteed, unless the accumulation points form a continuum. This holds for different sparsity measures. The majorization method is an optimization method that substitutes the original objective function with a surrogate function that is updated in each optimization step. This method has been used successfully in sparse approximation and statistical estimation [ e.g., expectation-maximization (EM)] problems. This paper shows that the majorization method can be used for the dictionary learning problem too. The proposed method is compared with other methods on both synthetic and real data and different constraints on the dictionary are compared. Simulations show the advantages of the proposed method over other currently available dictionary learning methods not only in terms of average performance but also in terms of computation time.
Keywords
approximation theory; convergence of numerical methods; dictionaries; optimisation; signal processing; sparse matrices; statistical analysis; convergence method; dictionary learning; majorization method; optimization method; signal processing; sparse approximation; statistical estimation; Block relaxation methods; constrained optimization; dictionary learning; majorization methods; sparse approximation; surrogate function optimization method;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2009.2016257
Filename
4787130
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