Visible to the public A multi-parameter optimization approach for complex continuous sparse modelling

TitleA multi-parameter optimization approach for complex continuous sparse modelling
Publication TypeConference Paper
Year of Publication2014
AuthorsChouzenoux, E., Pesquet, J.-C., Florescu, A.
Conference NameDigital Signal Processing (DSP), 2014 19th International Conference on
Date PublishedAug
Keywords2D spectrum analysis, 2D spectrum estimation, additive noise, complex continuous sparse modelling, concave programming, constrained sparse perturbed model, continuous compressive sensing, Dictionaries, dictionary elements, Digital signal processing, Estimation, forward-backward algorithm, hard thresholding, ℓ0-like penalty, linearisation techniques, linearization technique, Lipschitz differentiable data fidelity term, minimisation, multiparameter optimization approach, multivariate estimation, noise statistics, nonconvex minimization problem, nonconvex optimization, nonconvex optimization viewpoint, nonsmooth minimization problem, Optimization, proximity operator, Signal processing algorithms, signal representation, sparse modelling, Sparse Representation, Spectral analysis, Vectors
Abstract

The main focus of this work is the estimation of a complex valued signal assumed to have a sparse representation in an uncountable dictionary of signals. The dictionary elements are parameterized by a real-valued vector and the available observations are corrupted with an additive noise. By applying a linearization technique, the original model is recast as a constrained sparse perturbed model. The problem of the computation of the involved multiple parameters is addressed from a nonconvex optimization viewpoint. A cost function is defined including an arbitrary Lipschitz differentiable data fidelity term accounting for the noise statistics, and an l0-like penalty. A proximal algorithm is then employed to solve the resulting nonconvex and nonsmooth minimization problem. Experimental results illustrate the good practical performance of the proposed approach when applied to 2D spectrum analysis.

DOI10.1109/ICDSP.2014.6900780
Citation Key6900780