Reliable Inlier Evaluation for Unsupervised Point Cloud Registration
Yaqi Shen, Le Hui, Haobo Jiang, Jin Xie, Jian Yang

TL;DR
This paper introduces a neighborhood consensus-based inlier evaluation method to improve the accuracy of unsupervised point cloud registration, especially in partially overlapping scenarios, by effectively distinguishing inliers from outliers.
Contribution
It proposes a novel inlier evaluation approach leveraging geometric neighborhood differences, enhancing registration precision without supervision.
Findings
Achieves comparable registration performance on extensive datasets.
Improves inlier detection accuracy through neighborhood consensus.
Enhances robustness in partially overlapping point clouds.
Abstract
Unsupervised point cloud registration algorithm usually suffers from the unsatisfied registration precision in the partially overlapping problem due to the lack of effective inlier evaluation. In this paper, we propose a neighborhood consensus based reliable inlier evaluation method for robust unsupervised point cloud registration. It is expected to capture the discriminative geometric difference between the source neighborhood and the corresponding pseudo target neighborhood for effective inlier distinction. Specifically, our model consists of a matching map refinement module and an inlier evaluation module. In our matching map refinement module, we improve the point-wise matching map estimation by integrating the matching scores of neighbors into it. The aggregated neighborhood information potentially facilitates the discriminative map construction so that high-quality correspondences…
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Taxonomy
Topics3D Shape Modeling and Analysis · 3D Surveying and Cultural Heritage · Remote Sensing and LiDAR Applications
