PocoLoco: A Point Cloud Diffusion Model of Human Shape in Loose Clothing
Modeling a human avatar that can plausibly deform to articulations is an active area of research. We present PocoLoco -- the first template-free, point-based, pose-conditioned generative model for 3D humans in loose clothing. We motivate our work by noting that most methods require a parametric mode...
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Zusammenfassung: | Modeling a human avatar that can plausibly deform to articulations is an
active area of research. We present PocoLoco -- the first template-free,
point-based, pose-conditioned generative model for 3D humans in loose clothing.
We motivate our work by noting that most methods require a parametric model of
the human body to ground pose-dependent deformations. Consequently, they are
restricted to modeling clothing that is topologically similar to the naked body
and do not extend well to loose clothing. The few methods that attempt to model
loose clothing typically require either canonicalization or a
UV-parameterization and need to address the challenging problem of explicitly
estimating correspondences for the deforming clothes. In this work, we
formulate avatar clothing deformation as a conditional point-cloud generation
task within the denoising diffusion framework. Crucially, our framework
operates directly on unordered point clouds, eliminating the need for a
parametric model or a clothing template. This also enables a variety of
practical applications, such as point-cloud completion and pose-based editing
-- important features for virtual human animation. As current datasets for
human avatars in loose clothing are far too small for training diffusion
models, we release a dataset of two subjects performing various poses in loose
clothing with a total of 75K point clouds. By contributing towards tackling the
challenging task of effectively modeling loose clothing and expanding the
available data for training these models, we aim to set the stage for further
innovation in digital humans. The source code is available at
https://github.com/sidsunny/pocoloco . |
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DOI: | 10.48550/arxiv.2411.04249 |