AttriHuman-3D: Editable 3D Human Avatar Generation with Attribute Decomposition and Indexing
Fan Yang, Tianyi Chen, Xiaosheng He, Zhongang Cai, Lei Yang, Si Wu,, Guosheng Lin

TL;DR
AttriHuman-3D is a novel editable 3D human avatar generation model that enables precise, attribute-specific editing with high quality, achieved through attribute decomposition, indexing, and disentanglement techniques.
Contribution
The paper introduces a new 3D human avatar generation method with attribute decomposition and indexing, improving local editing accuracy and reducing computational costs.
Findings
Effective attribute disentanglement demonstrated
Supports fine-grained, attribute-specific editing
Produces high-quality 3D human avatars
Abstract
Editable 3D-aware generation, which supports user-interacted editing, has witnessed rapid development recently. However, existing editable 3D GANs either fail to achieve high-accuracy local editing or suffer from huge computational costs. We propose AttriHuman-3D, an editable 3D human generation model, which address the aforementioned problems with attribute decomposition and indexing. The core idea of the proposed model is to generate all attributes (e.g. human body, hair, clothes and so on) in an overall attribute space with six feature planes, which are then decomposed and manipulated with different attribute indexes. To precisely extract features of different attributes from the generated feature planes, we propose a novel attribute indexing method as well as an orthogonal projection regularization to enhance the disentanglement. We also introduce a hyper-latent training strategy…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · 3D Shape Modeling and Analysis · Human Pose and Action Recognition
