Local Behavior of Sparse Analysis Regularization: Applications to Risk Estimation
Samuel Vaiter (CEREMADE), Charles Deledalle (CEREMADE), Gabriel, Peyr\'e (CEREMADE), Charles Dossal (IMB), Jalal Fadili (GREYC)

TL;DR
This paper studies the local behavior of sparse analysis regularization in inverse problems, providing theoretical insights, risk estimation methods, and algorithms for improved signal recovery and parameter selection in imaging applications.
Contribution
It proves the piecewise-affine nature of minimizers, extends GSURE for risk estimation, and develops fast algorithms for L1 analysis regularization.
Findings
Minimizers are piecewise-affine functions of data and parameters.
Extended GSURE provides unbiased risk estimates for regularization.
Algorithms enable efficient parameter tuning in imaging problems.
Abstract
In this paper, we aim at recovering an unknown signal x0 from noisy L1measurements y=Phi*x0+w, where Phi is an ill-conditioned or singular linear operator and w accounts for some noise. To regularize such an ill-posed inverse problem, we impose an analysis sparsity prior. More precisely, the recovery is cast as a convex optimization program where the objective is the sum of a quadratic data fidelity term and a regularization term formed of the L1-norm of the correlations between the sought after signal and atoms in a given (generally overcomplete) dictionary. The L1-sparsity analysis prior is weighted by a regularization parameter lambda>0. In this paper, we prove that any minimizers of this problem is a piecewise-affine function of the observations y and the regularization parameter lambda. As a byproduct, we exploit these properties to get an objectively guided choice of lambda. In…
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