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Signal Processing, 92 (2012) 2532-2544
Matching Pursuits with Random Sequential Subdictionaries
Manuel Moussallam 1, L. Daudet 2, G. Richard 1
(05/2012)

Matching pursuits are a class of greedy algorithms commonly used in signal processing, for solving the sparse approximation problem. They rely on an atom selection step that requires the calculation of numerous projections, which can be computationally costly for large dictionaries and burdens their competitiveness in coding applications. We propose using a non adaptive random sequence of subdictionaries in the decomposition process, thus parsing a large dictionary in a probabilistic fashion with no additional projection cost nor parameter estimation. A theoretical modeling based on order statistics is provided, along with experimental evidence showing that the novel algorithm can be efficiently used on sparse approximation problems. An application to audio signal compression with multiscale time-frequency dictionaries is presented, along with a discussion of the complexity and practical implementations.

1 :  Laboratoire Traitement et Communication de l'Information [Paris] (LTCI)
Télécom ParisTech – CNRS : UMR5141
2 :  Laboratoire ondes et acoustique (LOA)
CNRS : UMR7587 – Université Paris VII - Paris Diderot – ESPCI ParisTech
Informatique/Traitement du signal et de l'image

Sciences de l'ingénieur/Traitement du signal et de l'image

Informatique/Algorithme et structure de données

Informatique/Son
Sparse Representation – Random Matching Pursuit – Audio Compression
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