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Treffer: Variational models for signal processing with Graph Neural Networks

Title:
Variational models for signal processing with Graph Neural Networks
Contributors:
Equipe Image - Laboratoire GREYC - UMR6072, Groupe de Recherche en Informatique, Image et Instrumentation de Caen (GREYC), Université de Caen Normandie (UNICAEN), Normandie Université (NU)-Normandie Université (NU)-École Nationale Supérieure d'Ingénieurs de Caen (ENSICAEN), Normandie Université (NU)-Centre National de la Recherche Scientifique (CNRS)-Université de Caen Normandie (UNICAEN), Normandie Université (NU)-Centre National de la Recherche Scientifique (CNRS)
Source:
Scale Space and Variational Methods in Computer Vision ; https://hal.science/hal-03249876 ; Scale Space and Variational Methods in Computer Vision, May 2021, Cabourg, France
Publisher Information:
CCSD
Publication Year:
2021
Collection:
Normandie Université: HAL
Subject Geographic:
Document Type:
Konferenz conference object
Language:
English
Rights:
info:eu-repo/semantics/OpenAccess
Accession Number:
edsbas.6798A808
Database:
BASE

Weitere Informationen

International audience ; This paper is devoted to signal processing on point-clouds by means of neural networks. Nowadays, state-of-the-art in image processing and computer vision is mostly based on training deep convolutional neural networks on large datasets. While it is also the case for the processing of point-clouds with Graph Neural Networks (GNN), the focus has been largely given to high-level tasks such as classification and segmentation using supervised learning on labeled datasets such as ShapeNet. Yet, such datasets are scarce and time-consuming to build depending on the target application. In this work, we investigate the use of variational models for such GNN to process signals on graphs for unsupervised learning. Our contributions are twofold. We first show that some existing variational-based algorithms for signals on graphs can be formulated as Message Passing Networks (MPN), a particular instance of GNN, making them computationally efficient in practice when compared to standard gradient-based machine learning algorithms. Secondly, we investigate the unsupervised learning of feed-forward GNN, either by direct optimization of an inverse problem or by model distillation from variational-based MPN.