Non-local tensor sparse coding for multi-image ...
Type de document :
Pré-publication ou Document de travail
Titre :
Non-local tensor sparse coding for multi-image super-resolution in magnetic resonance imaging
Auteur(s) :
Prévost, Clémence [Auteur]
Centre de Recherche en Informatique, Signal et Automatique de Lille - UMR 9189 [CRIStAL]
Odille, F [Auteur]
Imagerie Adaptative Diagnostique et Interventionnelle [IADI]
Centre de Recherche en Informatique, Signal et Automatique de Lille - UMR 9189 [CRIStAL]
Odille, F [Auteur]
Imagerie Adaptative Diagnostique et Interventionnelle [IADI]
Mot(s)-clé(s) en anglais :
magnetic resonance imaging
super-resolution
multi-modality fusion
inverse methods
compressive sensing
super-resolution
multi-modality fusion
inverse methods
compressive sensing
Discipline(s) HAL :
Informatique [cs]/Traitement du signal et de l'image [eess.SP]
Résumé en anglais : [en]
This paper introduces a non-local tensor sparse coding approach for multi-image super-resolution in magnetic resonance imaging. This approach is composed of four steps: (i) non-local clustering of the similar subtensors, ...
Lire la suite >This paper introduces a non-local tensor sparse coding approach for multi-image super-resolution in magnetic resonance imaging. This approach is composed of four steps: (i) non-local clustering of the similar subtensors, (ii) tensor sparse dictionary learning, (iii) tensor sparse coding and (iv) subtensor regularization. Using the Tucker decomposition, the image reconstruction problem is transformed into learning of sparse dictionaries along the three modes and core tensor sparse coding for each cluster, viewed as tensor. With the proposed approach, reconstruction is achieved with only two low-resolution images, which is a major advantage compared to other multi-frame reconstruction techniques. Flexible conditions for exact recovery are provided. This is also a major advantage of the proposed approach, that will facilitate the clinical implementation of our algorithm, allowing physicians to obtain images very quickly after acquisition, with both practical (convergence analysis) and theoretical guarantees (theorems). The experiments on a set of real quality test phantom and brain datasets show the competitive performance of the proposed approach with a significant gain of time compared to other state-of-the-art methods.Lire moins >
Lire la suite >This paper introduces a non-local tensor sparse coding approach for multi-image super-resolution in magnetic resonance imaging. This approach is composed of four steps: (i) non-local clustering of the similar subtensors, (ii) tensor sparse dictionary learning, (iii) tensor sparse coding and (iv) subtensor regularization. Using the Tucker decomposition, the image reconstruction problem is transformed into learning of sparse dictionaries along the three modes and core tensor sparse coding for each cluster, viewed as tensor. With the proposed approach, reconstruction is achieved with only two low-resolution images, which is a major advantage compared to other multi-frame reconstruction techniques. Flexible conditions for exact recovery are provided. This is also a major advantage of the proposed approach, that will facilitate the clinical implementation of our algorithm, allowing physicians to obtain images very quickly after acquisition, with both practical (convergence analysis) and theoretical guarantees (theorems). The experiments on a set of real quality test phantom and brain datasets show the competitive performance of the proposed approach with a significant gain of time compared to other state-of-the-art methods.Lire moins >
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Anglais
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