Litcius/Paper detail

Bilevel optimal parameter learning for a high-order nonlocal multiframe super-resolution problem

Amine Laghrib, Fatim Zahra Ait Bella, Mourad Nachaoui, François Jauberteau

2023Inverse Problems12 citationsDOIOpen Access PDF

Abstract

Abstract This work elaborated an improved method to multiframe super-resolution (SR), which involves a nonlocal first-order regularization combined with a nonlocal p-Laplacian term. The nonlocal TV term excels at edge preserving, whilst the nonlocal p-Laplacian is commonly used to perfectly reconstruct image textures. Firstly, we discuss the existence and uniqueness of a solution to our new model in a well posed framework. Then, we derive a modified Primal-dual iteration to compute the super-resolved solution. Furthermore, we introduce a new bilevel optimization approach to learn two regularization parameters. The included tests validate that the introduced optimization procedure performs favorably compared to numerous SR approaches in terms of efficiency and accuracy.

Topics & Concepts

Regularization (linguistics)UniquenessMathematicsBilevel optimizationSuperresolutionInverse problemLaplace operatorTerm (time)Optimization problemMathematical optimizationDual (grammatical number)Applied mathematicsImage (mathematics)AlgorithmComputer scienceArtificial intelligenceMathematical analysisQuantum mechanicsLiteraturePhysicsArtAdvanced Image Processing TechniquesSparse and Compressive Sensing TechniquesImage Processing Techniques and Applications