Optimal Selection of the Regularization Function in a Weighted Total Variation Model. Part II: Algorithm, Its Analysis and Numerical Tests

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作者
Michael Hintermüller
Carlos N. Rautenberg
Tao Wu
Andreas Langer
机构
[1] Humboldt-University of Berlin,Department of Mathematics
[2] University of Stuttgart,Department of Mathematics
关键词
Image restoration; Weighted total variation regularization; Spatially distributed regularization weight; Fenchel predual; Bilevel optimization; Variance corridor; Projected gradient method; Convergence analysis; 94A08; 68U10; 49K20; 49K30; 49K40; 49M37; 65K15;
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摘要
Based on the weighted total variation model and its analysis pursued in Hintermüller and Rautenberg 2016, in this paper a continuous, i.e., infinite dimensional, projected gradient algorithm and its convergence analysis are presented. The method computes a stationary point of a regularized bilevel optimization problem for simultaneously recovering the image as well as determining a spatially distributed regularization weight. Further, its numerical realization is discussed and results obtained for image denoising and deblurring as well as Fourier and wavelet inpainting are reported on.
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页码:515 / 533
页数:18
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