Treffer: Compressive learning of deep regularization for denoising

Title:
Compressive learning of deep regularization for denoising
Contributors:
Institut de Mathématiques de Bordeaux (IMB), Université de Bordeaux (UB)-Institut Polytechnique de Bordeaux (Bordeaux INP)-Centre National de la Recherche Scientifique (CNRS), ANR-20-CE40-0001,EFFIREG,Régularisation performante de problèmes inverses en grande dimension pour le traitement de données(2020)
Source:
International Conference on Scale Space and Variational Methods in Computer Vision (SSVM) ; https://hal.science/hal-03814336 ; International Conference on Scale Space and Variational Methods in Computer Vision (SSVM), May 2023, Cagliari, Italy
Publisher Information:
CCSD
Publication Year:
2023
Subject Terms:
Subject Geographic:
Document Type:
Konferenz conference object
Language:
English
Rights:
info:eu-repo/semantics/OpenAccess
Accession Number:
edsbas.26C5E706
Database:
BASE

Weitere Informationen

International audience ; Solving ill-posed inverse problems can be done accurately if a regularizer well adapted to the nature of the data is available. Such regularizer can be systematically linked with the distribution of the data itself through the maximum a posteriori Bayesian framework. Recently, regularizers designed with the help of deep neural networks received impressive success. Such regularizers are typically learned from voluminous training data. To reduce the computational burden of this task, we propose to adapt the compressive learning framework to the learning of regularizers parametrized by deep neural networks (DNN). Our work shows the feasibility of batchless learning of regularizers from a compressed dataset. In order to achieve this, we propose an approximation of the compression operator that can be calculated explicitly for the task of learning a regularizer by DNN. We show that the proposed regularizer is capable of modeling complex regularity prior and can be used to solve the denoising inverse problem.