3D Pose Transfer with Correspondence Learning and Mesh Refinement
- URL: http://arxiv.org/abs/2109.15025v2
- Date: Mon, 4 Oct 2021 12:03:54 GMT
- Title: 3D Pose Transfer with Correspondence Learning and Mesh Refinement
- Authors: Chaoyue Song, Jiacheng Wei, Ruibo Li, Fayao Liu and Guosheng Lin
- Abstract summary: 3D pose transfer is one of the most challenging 3D generation tasks.
We propose a correspondence-refinement network to help the 3D pose transfer for both human and animal meshes.
- Score: 41.92922228475176
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 3D pose transfer is one of the most challenging 3D generation tasks. It aims
to transfer the pose of a source mesh to a target mesh and keep the identity
(e.g., body shape) of the target mesh. Some previous works require key point
annotations to build reliable correspondence between the source and target
meshes, while other methods do not consider any shape correspondence between
sources and targets, which leads to limited generation quality. In this work,
we propose a correspondence-refinement network to help the 3D pose transfer for
both human and animal meshes. The correspondence between source and target
meshes is first established by solving an optimal transport problem. Then, we
warp the source mesh according to the dense correspondence and obtain a coarse
warped mesh. The warped mesh will be better refined with our proposed Elastic
Instance Normalization, which is a conditional normalization layer and can help
to generate high-quality meshes. Extensive experimental results show that the
proposed architecture can effectively transfer the poses from source to target
meshes and produce better results with satisfied visual performance than
state-of-the-art methods.
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