Convex Variational Formulation with Smooth Coupling for Multicomponent Signal Decomposition and Recovery |
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Authors: | Luis M.Briceo-Arias Patrick L.Combettes |
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Affiliation: | 1. UPMC Universite Paris 06, Laboratoire Jacques-Louis Lions-UMR 7598 and (E)quipe Combinatoire et Optimisation - UMR 7090, 75005 Paris, France 2. UPMC Universite Paris 06, Laboratoire Jacques-Louis Lions-UMR 7598, 75005 Paris, France |
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Abstract: | A convex variational formulation is proposed to solve multicomponent signal processing problems in Hilbert spaces. The cost function consists of a separable term, in which each component is modeled through its own potential, and of a coupling term, in which constraints on linear transformations of the components are penalized with smooth functionals. An algorithm with guaranteed weak convergence to a solution to the problem is provided. Various multicomponent signal decomposition and recovery applications are discussed. |
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Keywords: | Convex optimization denoising image restoration proximal algorithm signal decomposition signal recovery |
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