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Shape-constrained regularization by statistical multiresolution for inverse problems: asymptotic analysis.
Inverse Problems, 28(6):065006, 2012.
Klaus Frick, Philipp Marnitz und Axel Munk.
[doi]
[Kurzfassung]
[BibTeX]
This paper is concerned with a novel regularization technique for solving linear ill-posed operator equations in Hilbert spaces from data that are corrupted by white noise. We combine convex penalty functionals with extreme-value statistics of projections of the residuals on a given set of sub-spaces in the image space of the operator. We prove general consistency and convergence rate results in the framework of Bregman divergences which allows for a vast range of penalty functionals. Various examples that indicate the applicability of our approach will be discussed. We will illustrate in the context of signal and image processing that the presented method constitutes a locally adaptive reconstruction method.
Statistical Multiresolution Danzig Estimation in Imaging: Fundamental Concepts and Algorithmic Framework.
Electron.J.Stat., 6:231-268, 2012.
Klaus Frick, Philipp Marnitz und Axel Munk.
[doi]
[BibTeX]
Statistical Multiresolution Estimation for Variational Imaging: With an Application in Poisson-Biophotonics.
Journal of Mathematical Imaging and Vision:1-18, 2012.
Klaus Frick, Philipp Marnitz und Axel Munk.
[doi]
[Kurzfassung]
[BibTeX]
In this paper we present a spatially-adaptive method for image reconstruction that is based on the concept of statistical multiresolution estimation as introduced in Frick et al. (Electron. J. Stat. 6:231–268, 2012 ). It constitutes a variational regularization technique that uses an ℓ ∞ -type distance measure as data-fidelity combined with a convex cost functional. The resulting convex optimization problem is approached by a combination of an inexact alternating direction method of multipliers and Dykstra’s projection algorithm. We describe a novel method for balancing data-fit and regularity that is fully automatic and allows for a sound statistical interpretation. The performance of our estimation approach is studied for various problems in imaging. Among others, this includes deconvolution problems that arise in Poisson nanoscale fluorescence microscopy.
A Method of Moments Estimator of Tail Dependence in Meta-Elliptical Models.
Journal of Statistical Planning and Inference, 142(7):1811-1823, 2012.
Andrea Krajina.
[doi]
[BibTeX]
An M-Estimator For Tail Dependence In Arbitrary Dimensions
.
2011.
John H.J. Einmahl, Andrea Krajina und Johan Segers.
[doi]
[BibTeX]
Iteratively regularized Gauss-Newton method for nonlinear inverse problems with random noise.
SIAM J. Numer. Anal., 47(3):1827-1846, 2009.
Frank Bauer, Thorsten Hohage und Axel Munk.
[BibTeX]
Convergence analysis of generalized iteratively reweighted least squares algorithms on convex function spaces.
SIAM J. Optim., 19(4):1828-1845, 2009.
Nicolai Bissantz, Lutz Dümbgen, Axel Munk und Bernd Stratmann.
[BibTeX]
Locally adaptive image denoising by a statistical multiresolution criterion.
2009.
Thomas Hotz, Philipp Marnitz, Rahel Stichtenoth, Laurie Davies, Zakhar Kabluchko und Axel Munk.
[doi]
[BibTeX]
Limiting distribution of the continuity modulus for Gaussian processes with stationary increments.
Statist. Propab. Lett., 79(7):953-956, 2009.
Zakhar Kabluchko.
[BibTeX]
Scan statistics of Lévy noises and marked empirical processes.
Adv. in Appl. Probab., 41(1):13-37, 2009.
Zakhar Kabluchko und Evgeny Spodarev.
[BibTeX]
A statistical stopping rule for MLEM reconstructions in PET.
Band 8.
2008.
[doi]
[BibTeX]
Exact convergence rate for the maximum of standardized Gaussian increments.
Electron. Commun. Probab., 13:302-310, 2008.
Zakhar Kabluchko und Axel Munk.
[doi]
[BibTeX]
Shao's theorem on the maximum of standardized random walk increments for multidimensional arrays.
ESAIM Prob. Stat., 13:409-416, 2008.
Zakhar Kabluchko und Axel Munk.
[BibTeX]
Self-consistent residual dipolar coupling based model-free analysis for the robust determination of nanosecond to microsecond protein dynamics.
Journal of Biomolecular NMR, 41:139-155, 2008.
Nils-Alexander Lakomek, Korvin F. A. Walter, Christophe Farès, Oliver F. Lange, Bert L. de Groot, Helmut Grubmüller, Rafael Brüschweiler, Axel Munk, Stefan Becker, Jens Meiler und Christian Griesinger.
[BibTeX]
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