ShapeFlow: Learnable Deformation Flows Among 3D Shapes

Abstract

We present ShapeFlow, a flow-based model for learning a deformation space for entire classes of 3D shapes with large intra-class variations. ShapeFlow allows learning a multi-template deformation space that is agnostic to shape topology, yet preserves fine geometric details. Different from a generative space where a latent vector is directly decoded into a shape, a deformation space decodes a vector into a continuous flow that can advect a source shape towards a target. Such a space naturally allows the disentanglement of geometric style (coming from the source) and structural pose (conforming to the target). We parametrize the deformation between geometries as a learned continuous flow field via a neural network and show that such deformations can be guaranteed to have desirable properties, such as bijectivity, freedom from self-intersections, or volume preservation. We illustrate the effectiveness of this learned deformation space for various downstream applications, including shape generation via deformation, geometric style transfer, unsupervised learning of a consistent parameterization for entire classes of shapes, and shape interpolation.

Cite

Text

Jiang et al. "ShapeFlow: Learnable Deformation Flows Among 3D Shapes." Neural Information Processing Systems, 2020.

Markdown

[Jiang et al. "ShapeFlow: Learnable Deformation Flows Among 3D Shapes." Neural Information Processing Systems, 2020.](https://mlanthology.org/neurips/2020/jiang2020neurips-shapeflow/)

BibTeX

@inproceedings{jiang2020neurips-shapeflow,
  title     = {{ShapeFlow: Learnable Deformation Flows Among 3D Shapes}},
  author    = {Jiang, Chiyu and Huang, Jingwei and Tagliasacchi, Andrea and Guibas, Leonidas},
  booktitle = {Neural Information Processing Systems},
  year      = {2020},
  url       = {https://mlanthology.org/neurips/2020/jiang2020neurips-shapeflow/}
}