Derivative-free MLSCD conjugate gradient method for sparse signal and image reconstruction in compressive sensing

Author:

Ibrahim Abdulkarim1,Kumam Poom2,Abubakar Auwal3,Abubakar Jamilu4,Rilwan Jewaidu5,Taddele Guash6

Affiliation:

1. Department of Mathematics and Applied Mathematics, Sefako Makgatho Health Sciences University, Ga-Rankuwa, Pretoria, Medunsa, South Africa

2. Department of Medical Research, China Medical University Hospital, China Medical University, Taichung, Taiwan

3. Department of Mathematical Sciences, Faculty of Physical Sciences, Bayero University, Kano. Kano, Nigeria + Department of Mathematics and Applied Mathematics,Sefako Makgatho Health Sciences University, Ga-Rankuwa, Pretoria, Medunsa, South Africa

4. KMUTTFixed Point Research Laboratory, Room SCL Fixed Point Laboratory, Science Laboratory Building, Department of Mathematics, Faculty of Science, King Mongkut’s University of Technology Thonburi (KMUTT), Bang Mod, Thung Khru, Bangkok, Thailand + Department of Mathematics, Usmanu Danfodiyo University, Sokoto, Nigeria

5. dDepartment of Mathematical Sciences, Faculty of Physical Sciences, Bayero University, Kano, Nigeria

6. KMUTTFixed Point Research Laboratory, Room SCL Fixed Point Laboratory, Science Laboratory Building, Department of Mathematics, Faculty of Science, King Mongkut’s University of Technology Thonburi (KMUTT), Bang Mod, Thung Khru, Bangkok, Thailand + Department of Mathematics, Debre Berhan University, Ethiopia

Abstract

Finding the sparse solution to under-determined or ill-condition equations is a fundamental problem encountered in most applications arising from a linear inverse problem, compressive sensing, machine learning and statistical inference. In this paper, inspired by the reformulation of the ?1-norm regularized minimization problem into a convex quadratic program problem by Xiao et al. (Nonlinear Anal Theory Methods Appl, 74(11), 3570-3577), we propose, analyze, and test a derivative-free conjugate gradient method to solve the ?1-norm problem arising from the reconstruction of sparse signal and image in compressive sensing. The method combines the MLSCD conjugate gradient method proposed for solving unconstrained minimization problem by Stanimirovic et al. (J Optim Theory Appl, 178(3), 860-884) and a line search method. Under some mild assumptions, the global convergence of the proposed method is established using the backtracking line search. Computational experiments are carried out to reconstruct sparse signal and image in compressive sensing. The numerical results indicate that the proposed method is stable, accurate and robust.

Publisher

National Library of Serbia

Subject

General Mathematics

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