DoubleField: Bridging the Neural Surface and Radiance Fields for High-fidelity Human Rendering
Ruizhi Shao, Hongwen Zhang, He Zhang, Yanpei Cao, Tao Yu, Yebin Liu
6/8/2021
Keywords: Speed & Computational Efficiency, Human (Body), Sparse Reconstruction, Local Conditioning
Venue: ARXIV 2021
Bibtex:
@article{shao2021doublefield,
journal = {arXiv preprint arXiv:2106.03798},
booktitle = {ArXiv Pre-print},
author = {Ruizhi Shao and Hongwen Zhang and He Zhang and Yanpei Cao and Tao Yu and Yebin Liu},
title = {DoubleField: Bridging the Neural Surface and Radiance Fields for High-fidelity Human Rendering},
year = {2021},
url = {http://arxiv.org/abs/2106.03798v2},
entrytype = {article},
id = {shao2021doublefield}
}
Abstract
We introduce DoubleField, a novel representation combining the merits of both surface field and radiance field for high-fidelity human rendering. Within DoubleField, the surface field and radiance field are associated together by a shared feature embedding and a surface-guided sampling strategy. In this way, DoubleField has a continuous but disentangled learning space for geometry and appearance modeling, which supports fast training, inference, and finetuning. To achieve high-fidelity free-viewpoint rendering, DoubleField is further augmented to leverage ultra-high-resolution inputs, where a view-to-view transformer and a transfer learning scheme are introduced for more efficient learning and finetuning from sparse-view inputs at original resolutions. The efficacy of DoubleField is validated by the quantitative evaluations on several datasets and the qualitative results in a real-world sparse multi-view system, showing its superior capability for photo-realistic free-viewpoint human rendering. For code and demo video, please refer to our project page: http://www.liuyebin.com/dbfield/dbfield.html.
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