Learning to encode differences in the geometry and (topological) structure of the shapes of ordinary objects is key to generating semantically plausible variations of a given shape, transferring edits from one shape to another, and for many other applications in 3D content creation. The common approach of encoding shapes as points in a high-dimensional latent feature space suggests treating shape differences as vectors in that space. Instead, we treat shape differences as primary objects in their own right and propose to encode them in their own latent space. In a setting where the shapes themselves are encoded in terms of fine-grained part hierarchies, we demonstrate that a separate encoding of shape deltas or differences provides a princi...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
The use of autoencoders for shape editing or generation through latent space manipulation suffers fr...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
We introduce co-variation analysis as a tool for modeling the way part geometries and configurations...
Recent advancements in machine learning comprise generative models such as autoencoders (AE) for lea...
In this paper, we advocate the adoption of metric preservation as a powerful prior for learning late...
We introduce a novel neural network architecture for encoding and synthesis of 3D shapes, particular...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Existing work in shape editing applications using deep learning has primarily focused on shape inter...
<p>In this thesis, we investigate many aspects to extract shape proxies to enable perceptually sound...
In this work we discuss two novel perspectives to improve 3D shape generation. The first perspective...
Shape structure is about the arrangement and relations between shape parts. Structure-aware shape pr...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
3D shapes come in varied representations from a set of points to a set of images, each capturing dif...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
The use of autoencoders for shape editing or generation through latent space manipulation suffers fr...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
We introduce co-variation analysis as a tool for modeling the way part geometries and configurations...
Recent advancements in machine learning comprise generative models such as autoencoders (AE) for lea...
In this paper, we advocate the adoption of metric preservation as a powerful prior for learning late...
We introduce a novel neural network architecture for encoding and synthesis of 3D shapes, particular...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Existing work in shape editing applications using deep learning has primarily focused on shape inter...
<p>In this thesis, we investigate many aspects to extract shape proxies to enable perceptually sound...
In this work we discuss two novel perspectives to improve 3D shape generation. The first perspective...
Shape structure is about the arrangement and relations between shape parts. Structure-aware shape pr...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
3D shapes come in varied representations from a set of points to a set of images, each capturing dif...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
The use of autoencoders for shape editing or generation through latent space manipulation suffers fr...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...