
The Sliding Frank-Wolfe Algorithm for the BLASSO
Denoyelle, Quentin; Duval, Vincent; Peyré, Gabriel; Soubies, Emmanuel (2019), The Sliding Frank-Wolfe Algorithm for the BLASSO, Workshop on Signal Processing with Adaptative Sparse Structured Representations - SPARS 2019, Proceedings of the Workshop on Signal Processing with Adaptative Sparse Structured Representations -, p. 2
Type
Communication / ConférenceExternal document link
https://hal.archives-ouvertes.fr/hal-03012568Date
2019Conference title
SPARS 2019Conference date
2019Conference city
ToulouseConference country
FranceBook title
Workshop on Signal Processing with Adaptative Sparse Structured Representations - SPARS 2019Publisher
Proceedings of the Workshop on Signal Processing with Adaptative Sparse Structured Representations -
Pages
2
Metadata
Show full item recordAuthor(s)
Denoyelle, QuentinBiomedical Imaging Group [Lausanne]
Duval, Vincent

CEntre de REcherches en MAthématiques de la DEcision [CEREMADE]
Peyré, Gabriel
Département de Mathématiques et Applications - ENS Paris [DMA]
Soubies, Emmanuel

Institut de recherche en informatique de Toulouse [IRIT]
Biomedical Imaging Group [Lausanne]
Abstract (EN)
This paper showcases the theoretical and numerical performance of the Sliding Frank-Wolfe, which is a novel optimization algorithm to solve the BLASSO sparse spikes super-resolution problem. The BLASSO is a continuous (i.e. off-the-grid or grid-less) counterpart to the well-known 1 sparse regularisation method (also known as LASSO or Basis Pursuit). Our algorithm is a variation on the classical Frank-Wolfe (also known as conditional gradient) which follows a recent trend of interleaving convex optimization updates (corresponding to adding new spikes) with non-convex optimization steps (corresponding to moving the spikes). Our main theoretical result is that this algorithm terminates in a finite number of steps under a mild non-degeneracy hypothesis. We then target applications of this method to several instances of single molecule fluorescence imaging modalities, among which certain approaches rely heavily on the inversion of a Laplace transform. Our second theoretical contribution is the proof of the exact support recovery property of the BLASSO to invert the 1-D Laplace transform in the case of positive spikes. On the numerical side, we conclude this paper with an extensive study of the practical performance of the Sliding Frank-Wolfe on different instantiations of single molecule fluorescence imaging, including convolutive and non-convolutive (Laplace-like) operators. This shows the versatility and superiority of this method with respect to alternative sparse recovery technics.Subjects / Keywords
Traitement du signal et de l'imageRelated items
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