학술논문

Iterative Difference Hard-Thresholding Algorithm for Sparse Signal Recovery
Document Type
Article
Source
IEEE Transactions on Signal Processing; 2023, Vol. 71 Issue: 1 p1093-1102, 10p
Subject
Language
ISSN
1053587X
Abstract
In this paper, a nonconvex surrogate function, namely, Laplace norm, is studied to recover the sparse signals. Firstly, we discuss the equivalence of the optimal solutions of $l_{0}$-norm minimization problem, Laplace norm minimization problem and regularization Laplace norm minimization problem. It is proved that the $l_{0}$-norm minimization problem can be solved by solving the regularization Laplace norm minimization problem if the certain conditions are satisfied. Secondly, an iterative difference hard-thresholding algorithm and its adaptive version algorithm are proposed to solve the regularization Laplace norm minimization problem. Finally, we provide some numerical experiments to test the performance of the adaptive iterative difference hard-thresholding algorithm, and the numerical results show that the adaptive iterative difference hard-thresholding algorithm performs better than some state-of-art methods in recovering the sparse signals.