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GART

GART: Gaussian Articulated Template Models
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Jiahui Lei, Yufu Wang, Georgios Pavlakos, Lingjie Liu, Kostas Daniilidis

Splats
SMPL
Monocular
CVPR 2024
JiahuiLei/GART

GART: Gaussian Articulated Template Models

Python
302
19

Abstract
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We introduce Gaussian Articulated Template Model (GART), an explicit, efficient, and expressive representation for non-rigid articulated subject capturing and rendering from monocular videos. GART utilizes a mixture of moving 3D Gaussians to explicitly approximate a deformable subject’s geometry and appearance. It takes advantage of a categorical template model prior (SMPL, SMAL, etc.) with learnable forward skinning while further generalizing to more complex non-rigid deformations with novel latent bones. GART can be reconstructed via differentiable rendering from monocular videos in seconds or minutes and rendered in novel poses faster than 150fps.
Paper

Approach
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GART teaser
GART teaser.
GART method
GART method.

Results
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Data
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Comparisons
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Performance
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Papers Published @ 2024 - This article is part of a series.
Part 13: This Article