
A Low-Rank Approach to Off-The-Grid Sparse Deconvolution
Catala, Paul; Duval, Vincent; Peyré, Gabriel (2017), A Low-Rank Approach to Off-The-Grid Sparse Deconvolution, Journal of Physics. Conference Series, 904, conférence 1. 10.1088/1742-6596/904/1/012015
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Article accepté pour publication ou publiéDate
2017Nom de la revue
Journal of Physics. Conference SeriesVolume
904Numéro
conférence 1Éditeur
IOP Science
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We propose a new solver for the sparse spikes deconvolution problem over the space of Radon measures. A common approach to off-the-grid deconvolution considers semidefinite (SDP) relaxations of the total variation (the total mass of the absolute value of the measure) minimization problem. The direct resolution of this SDP is however intractable for large scale settings, since the problem size grows as f2dc where fc is the cutoff frequency of the filter and d the ambient dimension. Our first contribution introduces a penalized formulation of this semidefinite lifting, which has low-rank solutions. Our second contribution is a conditional gradient optimization scheme with non-convex updates. This algorithm leverages both the low-rank and the convolutive structure of the problem, resulting in an O(fdclogfc) complexity per iteration. Numerical simulations are promising and show that the algorithm converges in exactly r steps, r being the number of Diracs composing the solution.Mots-clés
Sparse Deconvolution; Radon measuresPublications associées
Affichage des éléments liés par titre et auteur.
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Catala, Paul; Duval, Vincent; Peyré, Gabriel (2017) Communication / Conférence
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Catala, Paul; Duval, Vincent; Peyré, Gabriel (2019) Article accepté pour publication ou publié
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Duval, Vincent; Peyré, Gabriel (2015) Document de travail / Working paper
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Duval, Vincent; Peyré, Gabriel (2015) Communication / Conférence
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Duval, Vincent; Peyré, Gabriel (2017) Article accepté pour publication ou publié