DocumentCode
1765637
Title
Fast and Accurate Algorithms for Re-Weighted
-Norm Minimization
Author
Asif, M. Salman ; Romberg, Justin
Author_Institution
Samsung Res. America, Richardson, TX, USA
Volume
61
Issue
23
fYear
2013
fDate
Dec.1, 2013
Firstpage
5905
Lastpage
5916
Abstract
To recover a sparse signal from an underdetermined system, we often solve a constrained l1-norm minimization problem. In many cases, the signal sparsity and recovery performance can be further improved by replacing the l1 norm with a “weighted” l1 norm. Without prior information about the signal´s nonzero elements, the procedure for selecting weights is iterative in nature. Common approaches update the weights at every iteration using the solution of a weighted l1 problem from the previous iteration. This paper presents two homotopy-based algorithms that efficiently solve reweighted l1 problems. First, we present an algorithm that quickly updates the solution of a weighted l1 problem as the weights change. Since the solution changes only slightly with small changes in weights, we develop a homotopy algorithm that replaces old weights with new ones in a small number of computationally inexpensive steps. Second, we propose an algorithm that solves a weighted l1 problem by adaptively selecting weights while estimating the signal. This algorithm integrates the reweighting into every step along the homotopy path by changing the weights according to changes in the solution and its support, allowing us to achieve a high quality signal reconstruction by solving a single homotopy problem. We compare both algorithms´ performance, in terms of reconstruction accuracy and computational complexity, against state-of-the-art solvers and show that our methods have smaller computational cost. We also show that the adaptive selection of the weights inside the homotopy often yields reconstructions of higher quality.
Keywords
computational complexity; iterative methods; minimisation; signal reconstruction; adaptive weight selection; computational complexity; constrained l1-norm minimization problem; high-quality signal reconstruction; homotopy-based algorithm; iterative procedure; re-weighted l1-norm minimization; reconstruction accuracy; signal estimation; signal nonzero element; sparse signal recovery; underdetermined system; LASSO; Sparse signal recovery; basis pursuit denoising; compressed sensing; homotopy;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2013.2279362
Filename
6587593
Link To Document