A Sparse Mesh Sampling Scheme for Graph-based Relief Pattern Classification

No Thumbnail Available
Date
2023
Journal Title
Journal ISSN
Volume Title
Publisher
The Eurographics Association
Abstract
In the context of geometric deep learning, the classification of relief patterns involves recognizing the surface characteristics of a 3D object, regardless of its global shape. State-of-the-art methods leverage powerful 2D deep learning image-based techniques by converting local patches of the surface into a texture image. However, their effectiveness is guaranteed only when the mesh is simple enough to allow this projection onto a 2D subspace. Therefore, developing deep learning techniques that can work directly on manifolds represents an interesting line of research for addressing these challenges. The objective of our paper is to extend and enhance the architecture described in a recent GNN approach for a relief pattern classifier through the introduction of a new sampling tecnhique for meshes. In their method, local mesh structures, referred to as SpiderPatches, are connected to form the nodes of a graph, called MeshGraph, that captures global structures of the mesh. These two data structures are then fed into a bi-level architecture based on Graph Attention Networks. The MeshGraph construction proves important in ensuring optimal classification results. By the proposed subsampling process, we tackle the problem of fine-tuning multiple hyperparameters inherent the MeshGraph by defining a graph structure that is aware of the mesh geometric details. We demonstrate that the graph constructed using this approach robustly captures the relief patterns on the surface, obviating the need for data augmentation during training. The resulting network is robust, easily customizable, and shows comparable performance to recent methods, all while operating directly on 3D data.
Description

CCS Concepts: Computing methodologies -> Neural networks; Object identification

        
@inproceedings{
10.2312:stag.20231298
, booktitle = {
Smart Tools and Applications in Graphics - Eurographics Italian Chapter Conference
}, editor = {
Banterle, Francesco
and
Caggianese, Giuseppe
and
Capece, Nicola
and
Erra, Ugo
and
Lupinetti, Katia
and
Manfredi, Gilda
}, title = {{
A Sparse Mesh Sampling Scheme for Graph-based Relief Pattern Classification
}}, author = {
Paolini, Gabriele
and
Guiducci, Niccolò
and
Tortorici, Claudio
and
Berretti, Stefano
}, year = {
2023
}, publisher = {
The Eurographics Association
}, ISSN = {
2617-4855
}, ISBN = {
978-3-03868-235-6
}, DOI = {
10.2312/stag.20231298
} }
Citation