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Herwig Wendt

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IRIT

In-Flight Estimation of Instrument Spectral Response Functions Using Sparse Representations

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Apr 08, 2024
Jihanne El Haouari, Jean-Michel Gaucel, Christelle Pittet, Jean-Yves Tourneret, Herwig Wendt

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Multivariate selfsimilarity: Multiscale eigen-structures for selfsimilarity parameter estimation

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Nov 06, 2023
Charles-Gérard Lucas, Gustavo Didier, Herwig Wendt, Patrice Abry

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Learning grounded word meaning representations on similarity graphs

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Sep 07, 2021
Mariella Dimiccoli, Herwig Wendt, Pau Batlle

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Graph Constrained Data Representation Learning for Human Motion Segmentation

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Jul 28, 2021
Mariella Dimiccoli, Lluís Garrido, Guillem Rodriguez-Corominas, Herwig Wendt

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Learning event representations in image sequences by dynamic graph embedding

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Oct 08, 2019
Mariella Dimiccoli, Herwig Wendt

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Enhancing temporal segmentation by nonlocal self-similarity

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Jun 14, 2019
Mariella Dimiccoli, Herwig Wendt

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A Quasi-Newton algorithm on the orthogonal manifold for NMF with transform learning

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Nov 06, 2018
Pierre Ablin, Dylan Fagot, Herwig Wendt, Alexandre Gramfort, Cédric Févotte

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Nonnegative Matrix Factorization with Transform Learning

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Dec 15, 2017
Dylan Fagot, Cédric Févotte, Herwig Wendt

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Bayesian selection for the l2-Potts model regularization parameter: 1D piecewise constant signal denoising

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Feb 27, 2017
Jordan Frecon, Nelly Pustelnik, Nicolas Dobigeon, Herwig Wendt, Patrice Abry

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Combining local regularity estimation and total variation optimization for scale-free texture segmentation

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Jun 24, 2016
Nelly Pustelnik, Herwig Wendt, Patrice Abry, Nicolas Dobigeon

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