Inverse problems with second-order Total Generalized Variation constraints

05/19/2020
by   Kristian Bredies, et al.
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Total Generalized Variation (TGV) has recently been introduced as penalty functional for modelling images with edges as well as smooth variations. It can be interpreted as a "sparse" penalization of optimal balancing from the first up to the k-th distributional derivative and leads to desirable results when applied to image denoising, i.e., L^2-fitting with TGV penalty. The present paper studies TGV of second order in the context of solving ill-posed linear inverse problems. Existence and stability for solutions of Tikhonov-functional minimization with respect to the data is shown and applied to the problem of recovering an image from blurred and noisy data.

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