English

P2P-NET: Bidirectional Point Displacement Net for Shape Transform

Graphics 2018-05-16 v4 Computer Vision and Pattern Recognition

Abstract

We introduce P2P-NET, a general-purpose deep neural network which learns geometric transformations between point-based shape representations from two domains, e.g., meso-skeletons and surfaces, partial and complete scans, etc. The architecture of the P2P-NET is that of a bi-directional point displacement network, which transforms a source point set to a target point set with the same cardinality, and vice versa, by applying point-wise displacement vectors learned from data. P2P-NET is trained on paired shapes from the source and target domains, but without relying on point-to-point correspondences between the source and target point sets. The training loss combines two uni-directional geometric losses, each enforcing a shape-wise similarity between the predicted and the target point sets, and a cross-regularization term to encourage consistency between displacement vectors going in opposite directions. We develop and present several different applications enabled by our general-purpose bidirectional P2P-NET to highlight the effectiveness, versatility, and potential of our network in solving a variety of point-based shape transformation problems.

Keywords

Cite

@article{arxiv.1803.09263,
  title  = {P2P-NET: Bidirectional Point Displacement Net for Shape Transform},
  author = {Kangxue Yin and Hui Huang and Daniel Cohen-Or and Hao Zhang},
  journal= {arXiv preprint arXiv:1803.09263},
  year   = {2018}
}

Comments

siggraph revision is done. 13 pages

R2 v1 2026-06-23T01:04:19.224Z