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H-NeRF

H-NeRF: Neural Radiance Fields for Rendering and Temporal Reconstruction of Humans in Motion
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Hongyi Xu, Thiemo Alldieck, Cristian Sminchisescu

NeRF
GHUM
SDF
NeurIPS 2021

Abstract
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We present neural radiance fields for rendering and temporal (4D) reconstruction of humans in motion (H-NeRF), as captured by a sparse set of cameras or even from a monocular video. Our approach combines ideas from neural scene representation, novel-view synthesis, and implicit statistical geometric human representations, coupled using novel loss functions. Instead of learning a radiance field with a uniform occupancy prior, we constrain it by a structured implicit human body model, represented using signed distance functions. This allows us to robustly fuse information from sparse views and generalize well beyond the poses or views observed in training. Moreover, we apply geometric constraints to co-learn the structure of the observed subject – including both body and clothing – and to regularize the radiance field to geometrically plausible solutions. Extensive experiments on multiple datasets demonstrate the robustness and the accuracy of our approach, its generalization capabilities significantly outside a small training set of poses and views, and statistical extrapolation beyond the observed shape.
Paper

Approach
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H-NeRF overview
H-NeRF overview.

Results
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Data
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Comparisons
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Performance
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Papers Published @ 2021 - This article is part of a series.
Part 4: This Article