Deep Global Registration
About
We present Deep Global Registration, a differentiable framework for pairwise registration of real-world 3D scans. Deep global registration is based on three modules: a 6-dimensional convolutional network for correspondence confidence prediction, a differentiable Weighted Procrustes algorithm for closed-form pose estimation, and a robust gradient-based SE(3) optimizer for pose refinement. Experiments demonstrate that our approach outperforms state-of-the-art methods, both learning-based and classical, on real-world data.
Christopher Choy, Wei Dong, Vladlen Koltun• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Point cloud registration | 3DMatch (test) | Registration Recall91.3 | 339 | |
| Point cloud registration | 3DLoMatch (test) | Registration Recall50.2 | 287 | |
| Point cloud registration | KITTI | RR95.14 | 76 | |
| Point cloud registration | KITTI odometry (sequences 8-10) | Success Rate98.7 | 70 | |
| Point cloud registration | 3DLoMatch Indoor (test) | RR48.7 | 66 | |
| Point cloud registration | 3DMatch | Registration Recall (RR)91.3 | 51 | |
| 3D Point Cloud Registration | KITTI (test) | RTE Avg (cm)23.28 | 26 | |
| Point cloud registration | nuScenes | RRE (°)0.48 | 25 | |
| Point cloud registration | KITTI odometry | Relative Recall (RR)96.9 | 22 | |
| 3D Point Cloud Registration | 3DMatch (test) | Total Time1.32e+3 | 21 |
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