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HF-Avatar

HF-Avatar: High-Fidelity Human Avatars from a Single RGB Camera
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Hao Zhao, Jinsong Zhang, Yu-Kun Lai, Zerong Zheng, Yingdi Xie, Yebin Liu, Kun Li

NeRF
SMPL
Texture
Monocular
CVPR 2022
hzhao1997/HF-Avatar

Python
123
13

Abstract
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In this paper, we propose a coarse-to-fine framework to reconstruct a personalized high-fidelity human avatar from a monocular video. To deal with the misalignment problem caused by the changed poses and shapes in different frames, we design a dynamic surface network to recover pose-dependent surface deformations, which help to decouple the shape and texture of the person. To cope with the complexity of textures and generate photo-realistic results, we propose a reference-based neural rendering network and exploit a bottom-up sharpening-guided finetuning strategy to obtain detailed textures. Our framework also enables photo-realistic novel view/pose synthesis and shape editing applications. Experimental results on both the public dataset and our collected dataset demonstrate that our method outperforms the state-of-theart methods.
Paper

Approach
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HF-Avatar overview
HF-Avatar overview.

Results
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Data
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Papers Published @ 2022 - This article is part of a series.
Part 10: This Article