Litcius/Paper detail

Novel forward–backward algorithms for optimization and applications to compressive sensing and image inpainting

Suthep Suantai, Muhammad Aslam Noor, Kunrada Kankam, Prasit Cholamjiak

2021Advances in Difference Equations20 citationsDOIOpen Access PDF

Abstract

Abstract The forward–backward algorithm is a splitting method for solving convex minimization problems of the sum of two objective functions. It has a great attention in optimization due to its broad application to many disciplines, such as image and signal processing, optimal control, regression, and classification problems. In this work, we aim to introduce new forward–backward algorithms for solving both unconstrained and constrained convex minimization problems by using linesearch technique. We discuss the convergence under mild conditions that do not depend on the Lipschitz continuity assumption of the gradient. Finally, we provide some applications to solving compressive sensing and image inpainting problems. Numerical results show that the proposed algorithm is more efficient than some algorithms in the literature. We also discuss the optimal choice of parameters in algorithms via numerical experiments.

Topics & Concepts

InpaintingAlgorithmCompressed sensingLipschitz continuityMinificationMathematicsMathematical optimizationConvex optimizationConvergence (economics)Image (mathematics)Proximal Gradient MethodsOrdinary differential equationOptimization problemPartial differential equationRegular polygonComputer scienceArtificial intelligenceDifferential equationGeometryEconomicsMathematical analysisEconomic growthSparse and Compressive Sensing TechniquesNumerical methods in inverse problemsPhotoacoustic and Ultrasonic Imaging
Novel forward–backward algorithms for optimization and applications to compressive sensing and image inpainting | Litcius