L'apprentissage de dictionnaire pour la représentation parcimonieuse est bien connu dans le cadre de la résolution de problèmes inverses. Les méthodes d'optimisation et les approches paramétriques ont été particulièrement explorées. Ces méthodes rencontrent certaines limitations, notamment liées au choix de paramètres. En général, la taille de dictionnaire doit être fixée à l'avance et une connaissance des niveaux de bruit et éventuellement de parcimonie sont aussi nécessaires. Les contributions méthodologies de cette thèse concernent l'apprentissage conjoint du dictionnaire et de ces paramètres, notamment pour les problèmes inverses en traitement d'image. Nous étudions et proposons la méthode IBP-DL (Indien Buffet Process for Dictionary Le...
Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image represe...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...
Over-complete bases offer the flexibility to represent much wider range of signals with more element...
National audienceDictionary learning for sparse representation is well known in solving inverse prob...
International audienceIll-posed inverse problems call for some prior model to define a suitable set ...
International audienceIll-posed inverse problems call for some prior model to define a suitable set ...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image represe...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...
Over-complete bases offer the flexibility to represent much wider range of signals with more element...
National audienceDictionary learning for sparse representation is well known in solving inverse prob...
International audienceIll-posed inverse problems call for some prior model to define a suitable set ...
International audienceIll-posed inverse problems call for some prior model to define a suitable set ...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
International audienceIll-posed inverse problems call for adapted models to define relevant solution...
Abstract—Nonparametric Bayesian methods are considered for recovery of imagery based upon compressiv...
Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image represe...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...
Over-complete bases offer the flexibility to represent much wider range of signals with more element...