Unsupervised Point Cloud Registration via
Salient Points Analysis (SPA)
IEEE International Conference on Visual Communication and Image Processing, 2020
- Pranav Kadam University of Southern California
- Min Zhang University of Southern California
- Shan Liu Tencent Media Lab
- C.-C. Jay Kuo University of Southern California
Abstract
An unsupervised point cloud registration method, called salient points analysis (SPA), is proposed in this work. The proposed SPA method can register two point clouds effectively using only a small subset of salient points. It first applies the PointHop++ method to point clouds, finds corresponding salient points in two point clouds based on the local surface characteristics of points and performs registration by matching the corresponding salient points. The SPA method offers several advantages over the recent deep learning based solutions for registration. Deep learning methods such as PointNetLK and DCP train end-to-end networks and rely on full supervision (namely, ground truth transformation matrix and class label). In contrast, the SPA is completely unsupervised. Furthermore, SPA's training time and model size are much less. The effectiveness of the SPA method is demonstrated by experiments on seen and unseen classes and noisy point clouds from the ModelNet-40 dataset.
Method overview
Citation
Acknowledgement
This work was supported by Tencent Media Lab.