Unsupervised Shape and Pose Disentanglement for 3D Meshes
- URL: http://arxiv.org/abs/2007.11341v1
- Date: Wed, 22 Jul 2020 11:00:27 GMT
- Title: Unsupervised Shape and Pose Disentanglement for 3D Meshes
- Authors: Keyang Zhou, Bharat Lal Bhatnagar, Gerard Pons-Moll
- Abstract summary: We present a simple yet effective approach to learn disentangled shape and pose representations in an unsupervised setting.
We use a combination of self-consistency and cross-consistency constraints to learn pose and shape space from registered meshes.
We demonstrate the usefulness of learned representations through a number of tasks including pose transfer and shape retrieval.
- Score: 49.431680543840706
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Parametric models of humans, faces, hands and animals have been widely used
for a range of tasks such as image-based reconstruction, shape correspondence
estimation, and animation. Their key strength is the ability to factor surface
variations into shape and pose dependent components. Learning such models
requires lots of expert knowledge and hand-defined object-specific constraints,
making the learning approach unscalable to novel objects. In this paper, we
present a simple yet effective approach to learn disentangled shape and pose
representations in an unsupervised setting. We use a combination of
self-consistency and cross-consistency constraints to learn pose and shape
space from registered meshes. We additionally incorporate as-rigid-as-possible
deformation(ARAP) into the training loop to avoid degenerate solutions. We
demonstrate the usefulness of learned representations through a number of tasks
including pose transfer and shape retrieval. The experiments on datasets of 3D
humans, faces, hands and animals demonstrate the generality of our approach.
Code is made available at
https://virtualhumans.mpi-inf.mpg.de/unsup_shape_pose/.
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