DocumentCode
137219
Title
Modified greedy pursuits for improving sparse recovery
Author
Deepa, K.G. ; Ambat, Sooraj K. ; Hari, K.V.S.
Author_Institution
Dept. of Electr. Commun. Eng., Indian Inst. of Sci., Bangalore, India
fYear
2014
fDate
Feb. 28 2014-March 2 2014
Firstpage
1
Lastpage
5
Abstract
Compressive Sensing (CS) theory combines the signal sampling and compression for sparse signals resulting in reduction in sampling rate. In recent years, many recovery algorithms have been proposed to reconstruct the signal efficiently. Subspace Pursuit and Compressive Sampling Matching Pursuit are some of the popular greedy methods. Also, Fusion of Algorithms for Compressed Sensing is a recently proposed method where several CS reconstruction algorithms participate and the final estimate of the underlying sparse signal is determined by fusing the estimates obtained from the participating algorithms. All these methods involve solving a least squares problem which may be ill-conditioned, especially in the low dimension measurement regime. In this paper, we propose a step prior to least squares to ensure the well-conditioning of the least squares problem. Using Monte Carlo simulations, we show that in low dimension measurement scenario, this modification improves the reconstruction capability of the algorithm in clean as well as noisy measurement cases.
Keywords
Monte Carlo methods; compressed sensing; greedy algorithms; least mean squares methods; signal sampling; Monte Carlo simulations; compressive sensing theory; least squares problem; modified greedy pursuits; signal sampling; sparse recovery; sparse signals; Compressed sensing; Matching pursuit algorithms; Noise measurement; Reconstruction algorithms; Signal processing algorithms; Signal reconstruction; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Communications (NCC), 2014 Twentieth National Conference on
Conference_Location
Kanpur
Type
conf
DOI
10.1109/NCC.2014.6811370
Filename
6811370
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