Approximate Sparse Decomposition Based on Smoothed L0-Norm
Abstract
In this paper, we propose a method to address the problem of source estimation for Sparse Component Analysis (SCA) in the presence of additive noise. Our method is a generalization of a recently proposed method (SL0), which has the advantage of directly minimizing the L0-norm instead of L1-norm, while being very fast. SL0 is based on minimization of the smoothed L0-norm subject to As=x. In order to better estimate the source vector for noisy mixtures, we suggest then to remove the constraint As=x, by relaxing exact equality to an approximation (we call our method Smoothed L0-norm Denoising or SL0DN). The final result can then be obtained by minimization of a proper linear combination of the smoothed L0-norm and a cost function for the approximation. Experimental results emphasize on the significant enhancement of the modified method in noisy cases.
Keywords
Cite
@article{arxiv.0811.2868,
title = {Approximate Sparse Decomposition Based on Smoothed L0-Norm},
author = {Hamed Firouzi and Masoud Farivar and Massoud Babaie-Zadeh and Christian Jutten},
journal= {arXiv preprint arXiv:0811.2868},
year = {2008}
}
Comments
4 Pages, Submitted to ICASSP 2009