Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficulty in ensuring plausibility encompassing correct topology and reasonable geometry. Indeed, learning the distribution of plausible 3D shapes seems a daunting task for the holistic approaches, given the significant topological variations of 3D objects even within the same category. Enlightened by the fact that 3D shape structure is characterized as part composition and placement, we propose to model 3D shape variations with a part-aware deep generative network, coined as PAGENet. The network is composed of an array of per-part VAE-GANs, generating semantic parts composing a complete shape, followed by a part assembly module that estimates a tran...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
Impressive progress in 3D shape extraction led to representations that can capture object geometries...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
Digital representations of 3D shapes are becoming increasingly useful in several emerging applicatio...
We introduce a novel neural network architecture for encoding and synthesis of 3D shapes, particular...
We present the Shape Part Slot Machine, a new method for assembling novel 3D shapes from existing pa...
We study the problem of learning generative models of 3D shapes. Voxels or 3D parts have been widely...
We introduce SDM-NET, a deep generative neural network which produces structured deformable meshes. ...
This thesis explores, for 3D shape representations, the relationship between geometry and meaning, f...
Learning to encode differences in the geometry and (topological) structure of the shapes of ordinary...
Manually authoring 3D shapes is difficult and time consuming; generative models of 3D shapes offer c...
A popular mode of shape synthesis involves mixing and matching parts from different objects to form ...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
Impressive progress in 3D shape extraction led to representations that can capture object geometries...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...
Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficult...
Figure 1: Given a collection of 3D shapes, we train a probabilistic model that performs joint shape ...
Composing structures from different 3D shapes is a fundamental task in many computer graphics applic...
Digital representations of 3D shapes are becoming increasingly useful in several emerging applicatio...
We introduce a novel neural network architecture for encoding and synthesis of 3D shapes, particular...
We present the Shape Part Slot Machine, a new method for assembling novel 3D shapes from existing pa...
We study the problem of learning generative models of 3D shapes. Voxels or 3D parts have been widely...
We introduce SDM-NET, a deep generative neural network which produces structured deformable meshes. ...
This thesis explores, for 3D shape representations, the relationship between geometry and meaning, f...
Learning to encode differences in the geometry and (topological) structure of the shapes of ordinary...
Manually authoring 3D shapes is difficult and time consuming; generative models of 3D shapes offer c...
A popular mode of shape synthesis involves mixing and matching parts from different objects to form ...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
Impressive progress in 3D shape extraction led to representations that can capture object geometries...
We propose to represent shapes as the deformation and combination of learnable elementary 3D structu...