Minimization of multi-penalty functionals by alternating iterative thresholding and optimal parameter choices

被引:12
作者
Naumova, Valeriya [1 ]
Peter, Steffen [2 ]
机构
[1] Simula Res Lab, NO-1364 Fornebu, Norway
[2] Tech Univ Munich, Fac Math, D-85748 Garching, Germany
基金
奥地利科学基金会;
关键词
multi-penalty regularization; compressed sensing; support identification; non-convex constraints; iterative thresholding; alternating minimization algorithm; LINEAR INVERSE PROBLEMS; IMAGE-RESTORATION; DECOMPOSITION; REGULARIZATION;
D O I
10.1088/0266-5611/30/12/125003
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Inspired by several recent developments in regularization theory, optimization, and signal processing, we present and analyze a numerical approach to multi-penalty regularization in spaces of sparsely represented functions. The sparsity prior is motivated by the largely expected geometrical/structured features of high-dimensional data, which may not be well-represented in the framework of typically more isotropic Hilbert spaces. In this paper, we are particularly interested in regularizers which are able to correctly model and separate the multiple components of additively mixed signals. This situation is rather common as pure signals may be corrupted by additive noise. To this end, we consider a regularization functional composed by a data-fidelity term, where signal and noise are additively mixed, a non-smooth and non-convex sparsity promoting term, and a penalty term to model the noise. We propose and analyze the convergence of an iterative alternating algorithm based on simple iterative thresholding steps to perform the minimization of the functional. By means of this algorithm, we explore the effect of choosing different regularization parameters and penalization norms in terms of the quality of recovering the pure signal and separating it from additive noise. For a given fixed noise level numerical experiments confirm a significant improvement in performance compared to standard one-parameter regularization methods. By using high-dimensional data analysis methods such as principal component analysis, we are able to show the correct geometrical clustering of regularized solutions around the expected solution. Eventually, for the compressive sensing problems considered in our experiments we provide a guideline for a choice of regularization norms and parameters.
引用
收藏
页数:34
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