End-to-end Learning the Partial Permutation Matrix for Robust 3D Point Cloud Registration
Zhiyuan Zhang, Jiadai Sun, Yuchao Dai, Dingfu Zhou, Xibin Song, and, Mingyi He

TL;DR
This paper introduces a novel end-to-end learning method for partial permutation matrices to improve robustness in 3D point cloud registration, effectively handling outliers and ambiguities.
Contribution
It proposes a soft-to-hard matching procedure for partial permutation matrices, enabling end-to-end training and integration with existing registration frameworks.
Findings
Achieves state-of-the-art performance in 3D registration tasks.
Effectively handles outliers and ambiguous correspondences.
Easily integrates with existing registration frameworks.
Abstract
Even though considerable progress has been made in deep learning-based 3D point cloud processing, how to obtain accurate correspondences for robust registration remains a major challenge because existing hard assignment methods cannot deal with outliers naturally. Alternatively, the soft matching-based methods have been proposed to learn the matching probability rather than hard assignment. However, in this paper, we prove that these methods have an inherent ambiguity causing many deceptive correspondences. To address the above challenges, we propose to learn a partial permutation matching matrix, which does not assign corresponding points to outliers, and implements hard assignment to prevent ambiguity. However, this proposal poses two new problems, i.e., existing hard assignment algorithms can only solve a full rank permutation matrix rather than a partial permutation matrix, and this…
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Taxonomy
Topics3D Shape Modeling and Analysis · 3D Surveying and Cultural Heritage · Human Pose and Action Recognition
