Statistical multiresolution Dantzig estimation in imaging: Fundamental concepts and algorithmic framework

2012 | journal article; research paper. A publication with affiliation to the University of Göttingen.

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​Statistical multiresolution Dantzig estimation in imaging: Fundamental concepts and algorithmic framework​
Frick, K. & Marnitz, P.​ (2012) 
Electronic Journal of Statistics6 pp. 231​-268​.​ DOI: https://doi.org/10.1214/12-EJS671 

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Authors
Frick, Klaus; Marnitz, Philipp
Abstract
In this paper we are concerned with fully automatic and locally adaptive estimation of functions in a "signal + noise"-model where the regression function may additionally be blurred by a linear operator, e.g. by a convolution. To this end, we introduce a general class of statistical multiresolution estimators and develop an algorithmic framework for computing those. By this we mean estimators that are defined as solutions of convex optimization problems with l(infinity)-type constraints. We employ a combination of the alternating direction method of multipliers with Dykstra's algorithm for computing orthogonal projections onto intersections of convex sets and prove numerical convergence. The capability of the proposed method is illustrated by various examples from imaging and signal detection.
Issue Date
2012
Journal
Electronic Journal of Statistics 
ISSN
1935-7524
Language
English

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