Litcius/Paper detail

Generative Deformable Radiance Fields for Disentangled Image Synthesis of Topology‐Varying Objects

Ziyu Wang, Yu Deng, Jiaolong Yang, Jingyi Yu, Xin Tong

2022Computer Graphics Forum11 citationsDOI

Abstract

Abstract 3D‐aware generative models have demonstrated their superb performance to generate 3D neural radiance fields (NeRF) from a collection of monocular 2D images even for topology‐varying object categories. However, these methods still lack the capability to separately control the shape and appearance of the objects in the generated radiance fields. In this paper, we propose a generative model for synthesizing radiance fields of topology‐varying objects with disentangled shape and appearance variations. Our method generates deformable radiance fields, which builds the dense correspondence between the density fields of the objects and encodes their appearances in a shared template field. Our disentanglement is achieved in an unsupervised manner without introducing extra labels to previous 3D‐aware GAN training. We also develop an effective image inversion scheme for reconstructing the radiance field of an object in a real monocular image and manipulating its shape and appearance. Experiments show that our method can successfully learn the generative model from unstructured monocular images and well disentangle the shape and appearance for objects (e.g., chairs) with large topological variance. The model trained on synthetic data can faithfully reconstruct the real object in a given single image and achieve high‐quality texture and shape editing results.

Topics & Concepts

RadianceComputer scienceArtificial intelligenceComputer visionGenerative grammarObject (grammar)Generative modelMonocularField (mathematics)Image (mathematics)Topology (electrical circuits)MathematicsRemote sensingGeographyCombinatoricsPure mathematicsComputer Graphics and Visualization Techniques3D Shape Modeling and AnalysisGenerative Adversarial Networks and Image Synthesis