DV-Matcher: Deformation-based Non-Rigid Point Cloud Matching Guided by Pre-trained Visual Features
About
In this paper, we present DV-Matcher, a novel learning-based framework for estimating dense correspondences between non-rigidly deformable point clouds. Learning directly from unstructured point clouds without meshing or manual labelling, our framework delivers high-quality dense correspondences, which is of significant practical utility in point cloud processing. Our key contributions are two-fold: First, we propose a scheme to inject prior knowledge from pre-trained vision models into geometric feature learning, which effectively complements the local nature of geometric features with global and semantic information; Second, we propose a novel deformation-based module to promote the extrinsic alignment induced by the learned correspondences, which effectively enhances the feature learning. Experimental results show that our method achieves state-of-the-art results in matching non-rigid point clouds in both near-isometric and heterogeneous shape collection as well as more realistic partial and noisy data.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Non-rigid shape matching | DT4D-H | Mean Geodesic Error (x100)6.9 | 39 | |
| Point cloud matching | SCAPE_r | Mean Geodesic Error6.2 | 23 | |
| Point cloud matching | FAUST_r | Mean Geodesic Error0.051 | 23 | |
| Point cloud matching | SHREC'19_r | Mean Geodesic Error (x100)7.2 | 14 | |
| Point cloud matching | SHREC07-H | Mean Geodesic Error7.7 | 14 | |
| 3D Shape Correspondence | SHREC Cross-dataset '19 | Accuracy0.271 | 7 | |
| 3D Shape Correspondence | TOSCA Cross-dataset | Accuracy39.5 | 7 | |
| Partial Shape Matching | SCAPE (S-PV) | Mean Geodesic Error (x100)6.2 | 7 | |
| Partial Shape Matching | SHREC Holes 2016 | Mean Geodesic Error (x100)0.13 | 7 | |
| Partial Shape Matching | SHREC Cuts 2016 | Mean Geodesic Error (x100)16.9 | 7 |