Publication | Open Access
Least-Square-Based Three-Term Conjugate Gradient Projection Method for ℓ1-Norm Problems with Application to Compressed Sensing
38
Citations
33
References
2020
Year
Numerical AnalysisSparse RepresentationEngineeringRegularization (Mathematics)Compressive SensingSignal Reconstruction-Norm Regularization ProblemInverse ProblemsComputational ImagingImage Restorationℓ1-Norm ProblemsSparse ImagingSignal ProcessingLow-rank Approximationℓ 1Linear Optimization
In this paper, we propose, analyze, and test an alternative method for solving the ℓ 1 -norm regularization problem for recovering sparse signals and blurred images in compressive sensing. The method is motivated by the recent proposed nonlinear conjugate gradient method of Tang, Li and Cui [Journal of Inequalities and Applications, 2020(1), 27] designed based on the least-squares technique. The proposed method aims to minimize a non-smooth minimization problem consisting of a least-squares data fitting term and an ℓ 1 -norm regularization term. The search directions generated by the proposed method are descent directions. In addition, under the monotonicity and Lipschitz continuity assumption, we establish the global convergence of the method. Preliminary numerical results are reported to show the efficiency of the proposed method in practical computation.
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