PatchNets: Patch-Based Generalizable Deep Implicit 3D Shape Representations

08/04/2020
by   Edgar Tretschk, et al.
42

Implicit surface representations, such as signed-distance functions, combined with deep learning have led to impressive models which can represent detailed shapes of objects with arbitrary topology. Since a continuous function is learned, the reconstructions can also be extracted at any arbitrary resolution. However, large datasets such as ShapeNet are required to train such models. In this paper, we present a new mid-level patch-based surface representation. At the level of patches, objects across different categories share similarities, which leads to more generalizable models. We then introduce a novel method to learn this patch-based representation in a canonical space, such that it is as object-agnostic as possible. We show that our representation trained on one category of objects from ShapeNet can also well represent detailed shapes from any other category. In addition, it can be trained using much fewer shapes, compared to existing approaches. We show several applications of our new representation, including shape interpolation and partial point cloud completion. Due to explicit control over positions, orientations and scales of patches, our representation is also more controllable compared to object-level representations, which enables us to deform encoded shapes non-rigidly.

READ FULL TEXT
research
06/10/2022

PatchComplete: Learning Multi-Resolution Patch Priors for 3D Shape Completion on Unseen Categories

While 3D shape representations enable powerful reasoning in many visual ...
research
11/08/2021

Deep Marching Tetrahedra: a Hybrid Representation for High-Resolution 3D Shape Synthesis

We introduce DMTet, a deep 3D conditional generative model that can synt...
research
05/27/2022

CIGMO: Categorical invariant representations in a deep generative framework

Data of general object images have two most common structures: (1) each ...
research
04/21/2022

Implicit Shape Completion via Adversarial Shape Priors

We present a novel neural implicit shape method for partial point cloud ...
research
03/19/2020

Local Implicit Grid Representations for 3D Scenes

Shape priors learned from data are commonly used to reconstruct 3D objec...
research
08/26/2023

Patch-Grid: An Efficient and Feature-Preserving Neural Implicit Surface Representation

Neural implicit representations are known to be more compact for depicti...
research
12/14/2020

Learning Category-level Shape Saliency via Deep Implicit Surface Networks

This paper is motivated from a fundamental curiosity on what defines a c...

Please sign up or login with your details

Forgot password? Click here to reset