Abstract
In this work, we present a novel method called WSDesc to learn 3D local descriptors in a weakly supervised manner for robust point cloud registration. Our work builds upon recent 3D CNN-based descriptor extractors, which leverage a voxel-based representation to parameterize local geometry of 3D points. Instead of using a predefined fixed-size local support in voxelization, we propose to learn the optimal support in a data-driven manner. To this end, we design a novel differentiable voxelization layer that can back-propagate the gradient to the support size optimization. To train the extracted descriptors, we propose a novel registration loss based on the deviation from rigidity of 3D transformations, and the loss is weakly supervised by the prior knowledge that the input point clouds have partial overlap, without requiring ground-truth alignment information. Through extensive experiments, we show that our learned descriptors yield superior performance on existing geometric registration benchmarks. © 2022 IEEE.
| Original language | English |
|---|---|
| Pages (from-to) | 3368-3379 |
| Number of pages | 12 |
| Journal | IEEE Transactions on Visualization and Computer Graphics |
| Volume | 29 |
| Issue number | 7 |
| Online published | 16 Mar 2022 |
| DOIs | |
| Publication status | Published - Jul 2023 |
Research Keywords
- 3D CNN
- 3D local descriptor
- Data mining
- differentiable voxelization
- Feature extraction
- geometric registration
- Geometry
- Point cloud
- Point cloud compression
- Rigidity
- Three-dimensional displays
- Training
- weak supervision