Title :
Stagewise Weak Gradient Pursuits
Author :
Blumensath, Thomas ; Davies, Mike E.
Author_Institution :
IDCOM, Edinburgh Univ., Edinburgh, UK
Abstract :
Finding sparse solutions to underdetermined inverse problems is a fundamental challenge encountered in a wide range of signal processing applications, from signal acquisition to source separation. This paper looks at greedy algorithms that are applicable to very large problems. The main contribution is the development of a new selection strategy (called stagewise weak selection) that effectively selects several elements in each iteration. The new selection strategy is based on the realization that many classical proofs for recovery of sparse signals can be trivially extended to the new setting. What is more, simulation studies show the computational benefits and good performance of the approach. This strategy can be used in several greedy algorithms, and we argue for the use within the gradient pursuit framework in which selected coefficients are updated using a conjugate update direction. For this update, we present a fast implementation and novel convergence result.
Keywords :
gradient methods; greedy algorithms; inverse problems; signal detection; source separation; greedy algorithms; inverse problems; signal acquisition; signal processing applications; signal source separation; simulation; sparse signal recovery; the gradient pursuit framework; Compressed sensing; gradient pursuit; orthogonal matching pursuit; sparse representations/approximations; stagewise selection; weak matching pursuit;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2009.2025088