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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

TaskDatasetResultRank
Point cloud registration3DMatch (test)
Registration Recall91.3
393
Point cloud registration3DLoMatch (test)
Registration Recall50.2
327
Point cloud registration3DMatch
Registration Recall (RR)91.3
182
Point cloud registrationKITTI
RR95.14
98
Point cloud registrationKITTI odometry (sequences 8-10)
Success Rate98.7
70
Point cloud registration3DLoMatch Indoor (test)
RR48.7
66
3D Point Cloud Registration3DMatch
Translation Error (cm)7.34
44
3D Point Cloud Registration3DMatch (test)
Total Time1.32e+3
29
3D Point Cloud RegistrationKITTI (test)
RTE Avg (cm)23.28
26
Point cloud registration3DLoMatch (low-overlap)
Registration Recall43.8
25
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