English

Deep Closest Point: Learning Representations for Point Cloud Registration

Computer Vision and Pattern Recognition 2019-05-10 v1

Abstract

Point cloud registration is a key problem for computer vision applied to robotics, medical imaging, and other applications. This problem involves finding a rigid transformation from one point cloud into another so that they align. Iterative Closest Point (ICP) and its variants provide simple and easily-implemented iterative methods for this task, but these algorithms can converge to spurious local optima. To address local optima and other difficulties in the ICP pipeline, we propose a learning-based method, titled Deep Closest Point (DCP), inspired by recent techniques in computer vision and natural language processing. Our model consists of three parts: a point cloud embedding network, an attention-based module combined with a pointer generation layer, to approximate combinatorial matching, and a differentiable singular value decomposition (SVD) layer to extract the final rigid transformation. We train our model end-to-end on the ModelNet40 dataset and show in several settings that it performs better than ICP, its variants (e.g., Go-ICP, FGR), and the recently-proposed learning-based method PointNetLK. Beyond providing a state-of-the-art registration technique, we evaluate the suitability of our learned features transferred to unseen objects. We also provide preliminary analysis of our learned model to help understand whether domain-specific and/or global features facilitate rigid registration.

Keywords

Cite

@article{arxiv.1905.03304,
  title  = {Deep Closest Point: Learning Representations for Point Cloud Registration},
  author = {Yue Wang and Justin M. Solomon},
  journal= {arXiv preprint arXiv:1905.03304},
  year   = {2019}
}
R2 v1 2026-06-23T09:00:52.517Z