PartNeRF: Generating Part-Aware Editable 3D Shapes without 3D Supervision

03/16/2023
by   Konstantinos Tertikas, et al.
0

Impressive progress in generative models and implicit representations gave rise to methods that can generate 3D shapes of high quality. However, being able to locally control and edit shapes is another essential property that can unlock several content creation applications. Local control can be achieved with part-aware models, but existing methods require 3D supervision and cannot produce textures. In this work, we devise PartNeRF, a novel part-aware generative model for editable 3D shape synthesis that does not require any explicit 3D supervision. Our model generates objects as a set of locally defined NeRFs, augmented with an affine transformation. This enables several editing operations such as applying transformations on parts, mixing parts from different objects etc. To ensure distinct, manipulable parts we enforce a hard assignment of rays to parts that makes sure that the color of each ray is only determined by a single NeRF. As a result, altering one part does not affect the appearance of the others. Evaluations on various ShapeNet categories demonstrate the ability of our model to generate editable 3D objects of improved fidelity, compared to previous part-based generative approaches that require 3D supervision or models relying on NeRFs.

READ FULL TEXT

page 6

page 28

page 29

page 30

page 32

page 36

page 37

page 38

research
01/31/2022

SPAGHETTI: Editing Implicit Shapes Through Part Aware Generation

Neural implicit fields are quickly emerging as an attractive representat...
research
11/03/2020

Generating Unobserved Alternatives

We consider problems where multiple predictions can be considered correc...
research
08/04/2018

Structure-Aware Shape Synthesis

We propose a new procedure to guide training of a data-driven shape gene...
research
12/01/2021

The Shape Part Slot Machine: Contact-based Reasoning for Generating 3D Shapes from Parts

We present the Shape Part Slot Machine, a new method for assembling nove...
research
09/22/2022

GET3D: A Generative Model of High Quality 3D Textured Shapes Learned from Images

As several industries are moving towards modeling massive 3D virtual wor...
research
04/26/2017

Epsilon-shapes: characterizing, detecting and thickening thin features in geometric models

We focus on the analysis of planar shapes and solid objects having thin ...
research
08/12/2018

Structure-aware Generative Network for 3D-Shape Modeling

We present SAGNet, a structure-aware generative model for 3D shapes. Giv...

Please sign up or login with your details

Forgot password? Click here to reset