International audienceConvolutional networks have been extremely successful for regular data structures such as 2D images and 3D voxel grids. The transposition to meshes is, however, not straightforward due to their irregular structure. We explore how the dual, face-based representation of triangular meshes can be leveraged as a data structure for graph convolutional networks. In the dual mesh, each node (face) has a fixed number of neighbors, which makes the networks less susceptible to overfitting on the mesh topology, and also allows the use of input features that are naturally defined over faces, such as surface normals and face areas. We evaluate the dual approach on the shape correspondence task on the Faust human shape dataset and va...
Virtual reality, driverless cars, and robotics all make extensive use of 3D shape classification. On...
code available at the following address:https://gitlab.inria.fr/marmando/deep-mesh-denoizingInternat...
In this work, we introduce multi-column graph convolutional networks (MGCNs), a deep generative mode...
International audienceConvolutional networks have been extremely successful for regular data structu...
Deep Learning methods have achieved phenomenal success in several fieldssuch as computer vision, nat...
International audienceConvolutional neural networks (CNNs) have massively impacted visual recogniti...
Processing 3D meshes using convolutional neural networks requires convolutions to operate on feature...
International audienceWe propose to improve on graph convolution based approaches for human shape an...
Les méthodes d'apprentissage profond ont connu un succès phénoménal dans plusieurs domaines scientif...
Deep neural networks (DNNs) have been widely used for mesh processing in recent years. However, curr...
We present an algorithm that automatically establishes dense correspondences between a large number ...
This paper tackles a particular shape matching problem: given a data base of shapes (described as t...
We introduce neural dual contouring (NDC), a new data-driven approach to mesh reconstruction based o...
A face image contains geometric cues in the form of configurational information (semantically meanin...
Virtual reality, driverless cars, and robotics all make extensive use of 3D shape classification. On...
code available at the following address:https://gitlab.inria.fr/marmando/deep-mesh-denoizingInternat...
In this work, we introduce multi-column graph convolutional networks (MGCNs), a deep generative mode...
International audienceConvolutional networks have been extremely successful for regular data structu...
Deep Learning methods have achieved phenomenal success in several fieldssuch as computer vision, nat...
International audienceConvolutional neural networks (CNNs) have massively impacted visual recogniti...
Processing 3D meshes using convolutional neural networks requires convolutions to operate on feature...
International audienceWe propose to improve on graph convolution based approaches for human shape an...
Les méthodes d'apprentissage profond ont connu un succès phénoménal dans plusieurs domaines scientif...
Deep neural networks (DNNs) have been widely used for mesh processing in recent years. However, curr...
We present an algorithm that automatically establishes dense correspondences between a large number ...
This paper tackles a particular shape matching problem: given a data base of shapes (described as t...
We introduce neural dual contouring (NDC), a new data-driven approach to mesh reconstruction based o...
A face image contains geometric cues in the form of configurational information (semantically meanin...
Virtual reality, driverless cars, and robotics all make extensive use of 3D shape classification. On...
code available at the following address:https://gitlab.inria.fr/marmando/deep-mesh-denoizingInternat...
In this work, we introduce multi-column graph convolutional networks (MGCNs), a deep generative mode...