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Beinert, Robert; Bredies, Kristian, E-mail: robert.beinert@uni-graz.at, E-mail: kristian.bredies@uni-graz.at2019
AbstractAbstract
[en] Considering the question: how non-linear may a non-linear operator be in order to extend the linear regularization theory, we introduce the class of dilinear mappings, which covers linear, bilinear, and quadratic operators between spaces. The corresponding dilinear inverse problems cover blind deconvolution, deautoconvolution, parallel imaging in MRI, and the phase retrieval problem. Based on the universal property of the tensor product, the central idea is here to lift the non-linear mappings to linear representatives on a suitable topological tensor space. At the same time, we extend the class of usually convex regularization functionals to the class of diconvex functionals, which are likewise defined by a tensorial lifting. Generalizing the concepts of subgradients and distances from convex analysis to the new framework, we analyse the novel class of dilinear inverse problems with non-convex regularization terms and establish convergence rates with respect to a generalized distance under similar conditions than in the linear setting. Considering the deautoconvolution problem as specific application, we derive satisfiable source conditions and validate the theoretical convergence rates numerically. (paper)
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Available from http://dx.doi.org/10.1088/1361-6420/aaea43; Country of input: International Atomic Energy Agency (IAEA)
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Journal Article
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