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Autores principales: Kassab, Karim, Schnepf, Antoine, Franceschi, Jean-Yves, Caraffa, Laurent, Vasile, Flavian, Mary, Jeremie, Comport, Andrew, Gouet-Brunet, Valérie
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2410.23742
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author Kassab, Karim
Schnepf, Antoine
Franceschi, Jean-Yves
Caraffa, Laurent
Vasile, Flavian
Mary, Jeremie
Comport, Andrew
Gouet-Brunet, Valérie
author_facet Kassab, Karim
Schnepf, Antoine
Franceschi, Jean-Yves
Caraffa, Laurent
Vasile, Flavian
Mary, Jeremie
Comport, Andrew
Gouet-Brunet, Valérie
contents Tri-Planar NeRFs enable the application of powerful 2D vision models for 3D tasks, by representing 3D objects using 2D planar structures. This has made them the prevailing choice to model large collections of 3D objects. However, training Tri-Planes to model such large collections is computationally intensive and remains largely inefficient. This is because the current approaches independently train one Tri-Plane per object, hence overlooking structural similarities in large classes of objects. In response to this issue, we introduce Fused-Planes, a novel object representation that improves the resource efficiency of Tri-Planes when reconstructing object classes, all while retaining the same planar structure. Our approach explicitly captures structural similarities across objects through a latent space and a set of globally shared base planes. Each individual Fused-Planes is then represented as a decomposition over these base planes, augmented with object-specific features. Fused-Planes showcase state-of-the-art efficiency among planar representations, demonstrating $7.2 \times$ faster training and $3.2 \times$ lower memory footprint than Tri-Planes while maintaining rendering quality. An ultra-lightweight variant further cuts per-object memory usage by $1875 \times$ with minimal quality loss. Our project page can be found at https://fused-planes.github.io .
format Preprint
id arxiv_https___arxiv_org_abs_2410_23742
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fused-Planes: Why Train a Thousand Tri-Planes When You Can Share?
Kassab, Karim
Schnepf, Antoine
Franceschi, Jean-Yves
Caraffa, Laurent
Vasile, Flavian
Mary, Jeremie
Comport, Andrew
Gouet-Brunet, Valérie
Computer Vision and Pattern Recognition
Tri-Planar NeRFs enable the application of powerful 2D vision models for 3D tasks, by representing 3D objects using 2D planar structures. This has made them the prevailing choice to model large collections of 3D objects. However, training Tri-Planes to model such large collections is computationally intensive and remains largely inefficient. This is because the current approaches independently train one Tri-Plane per object, hence overlooking structural similarities in large classes of objects. In response to this issue, we introduce Fused-Planes, a novel object representation that improves the resource efficiency of Tri-Planes when reconstructing object classes, all while retaining the same planar structure. Our approach explicitly captures structural similarities across objects through a latent space and a set of globally shared base planes. Each individual Fused-Planes is then represented as a decomposition over these base planes, augmented with object-specific features. Fused-Planes showcase state-of-the-art efficiency among planar representations, demonstrating $7.2 \times$ faster training and $3.2 \times$ lower memory footprint than Tri-Planes while maintaining rendering quality. An ultra-lightweight variant further cuts per-object memory usage by $1875 \times$ with minimal quality loss. Our project page can be found at https://fused-planes.github.io .
title Fused-Planes: Why Train a Thousand Tri-Planes When You Can Share?
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.23742