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Multi-instance Point Cloud Registration by Efficient Correspondence Clustering

About

We address the problem of estimating the poses of multiple instances of the source point cloud within a target point cloud. Existing solutions require sampling a lot of hypotheses to detect possible instances and reject the outliers, whose robustness and efficiency degrade notably when the number of instances and outliers increase. We propose to directly group the set of noisy correspondences into different clusters based on a distance invariance matrix. The instances and outliers are automatically identified through clustering. Our method is robust and fast. We evaluated our method on both synthetic and real-world datasets. The results show that our approach can correctly register up to 20 instances with an F1 score of 90.46% in the presence of 70% outliers, which performs significantly better and at least 10x faster than existing methods

Weixuan Tang, Danping Zou• 2021

Related benchmarks

TaskDatasetResultRank
Multi-instance 3D registrationScan2CAD (test)
MHR31.63
8
Multi-instance 3D registrationSynthetic Data
MHR53.39
8
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 10%~50% Outlier Ratio
MHR (%)96.08
4
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 50%~70% Outlier Ratio
MHR93.99
4
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 (70%~90% Outlier Ratio)
MHR0.6039
4
Multi-instance Point Cloud RegistrationModelNet40 Synthetic (90%~99% Outlier Ratio)
MHR14.7
4
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