DocumentCode :
68246
Title :
Learning Parametric Dictionaries for Signals on Graphs
Author :
Thanou, Dorina ; Shuman, David I. ; Frossard, Pascal
Author_Institution :
Signal Process. Lab.-LTS4, Ecole Polytech. Fed. de Lausanne, Lausanne, Switzerland
Volume :
62
Issue :
15
fYear :
2014
fDate :
Aug.1, 2014
Firstpage :
3849
Lastpage :
3862
Abstract :
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two desirable properties - the ability to adapt to specific signal data and a fast implementation of the dictionary. To sparsely represent signals residing on weighted graphs, an additional design challenge is to incorporate the intrinsic geometric structure of the irregular data domain into the atoms of the dictionary. In this work, we propose a parametric dictionary learning algorithm to design data-adapted, structured dictionaries that sparsely represent graph signals. In particular, we model graph signals as combinations of overlapping local patterns. We impose the constraint that each dictionary is a concatenation of subdictionaries, with each subdictionary being a polynomial of the graph Laplacian matrix, representing a single pattern translated to different areas of the graph. The learning algorithm adapts the patterns to a training set of graph signals. Experimental results on both synthetic and real datasets demonstrate that the dictionaries learned by the proposed algorithm are competitive with and often better than unstructured dictionaries learned by state-of-the-art numerical learning algorithms in terms of sparse approximation of graph signals. In contrast to the unstructured dictionaries, however, the dictionaries learned by the proposed algorithm feature localized atoms and can be implemented in a computationally efficient manner in signal processing tasks such as compression, denoising, and classification.
Keywords :
approximation theory; graph theory; learning (artificial intelligence); matrix algebra; signal representation; data-adapted structured dictionaries; graph Laplacian matrix; graph signals; intrinsic geometric structure; irregular data domain; overlapping local patterns; parametric dictionary learning algorithm; signal data; sparse approximation; sparse signal representation; subdictionary; training set; weighted graphs; Approximation algorithms; Approximation methods; Dictionaries; Laplace equations; Polynomials; Signal processing algorithms; Wavelet transforms; Dictionary learning; graph Laplacian; graph signal processing; sparse approximation;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2014.2332441
Filename :
6842705
Link To Document :
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