Skip to main content
  1. Papers/

R3-Avatar

R3-Avatar: Record and Retrieve Temporal Codebook for Reconstructing Photorealistic Human Avatars
#

Yifan Zhan, Wangze Xu, Qingtian Zhu, Muyao Niu, Mingze Ma, Yifei Liu, Zhihang Zhong, Xiao Sun, Yinqiang Zheng

Splats
SMPL-X
Deformation
arXiv 2025
Yifever20002/R3Avatars

R3-Avatar: Record and Retrieve Temporal Codebook for Reconstructing Photorealistic Human Avatars

Python
21
0

Abstract
#

We present R3-Avatar, incorporating a temporal codebook, to overcome the inability of human avatars to be both animatable and of high-fidelity rendering quality. Existing video-based reconstruction of 3D human avatars either focuses solely on rendering, lacking animation support, or learns a pose-appearance mapping for animating, which degrades under limited training poses or complex clothing. In this paper, we adopt a “record-retrieve-reconstruct” strategy that ensures high-quality rendering from novel views while mitigating degradation in novel poses. Specifically, disambiguating timestamps record temporal appearance variations in a codebook, ensuring high-fidelity novel-view rendering, while novel poses retrieve corresponding timestamps by matching the most similar training poses for augmented appearance. Our R3-Avatar outperforms cutting-edge video-based human avatar reconstruction, particularly in overcoming visual quality degradation in extreme scenarios with limited training human poses and complex clothing.
Paper

Approach
#

Paper teaser
Paper teaser.
Method overview
Method overview.

Results
#

Data
#

Comparisons
#

Performance
#

Papers Published @ 2025 - This article is part of a series.
Part 11: This Article