Deep Learning-Based Point Cloud Registration: A Comprehensive Survey and Taxonomy
Yu-Xin Zhang, Jie Gui, Baosheng Yu, Xiaofeng Cong, Xin Gong, Wenbing, Tao, Dacheng Tao

TL;DR
This paper provides a detailed survey and taxonomy of deep learning methods for point cloud registration, categorizing approaches, evaluating state-of-the-art techniques, and discussing future challenges in the field.
Contribution
It offers the first comprehensive taxonomy of deep learning-based point cloud registration methods, including systematic classification, evaluation, and analysis of recent approaches.
Findings
Unified evaluation framework for recent methods
Supervised and unsupervised approaches categorized
Identification of open challenges and future directions
Abstract
Point cloud registration involves determining a rigid transformation to align a source point cloud with a target point cloud. This alignment is fundamental in applications such as autonomous driving, robotics, and medical imaging, where precise spatial correspondence is essential. Deep learning has greatly advanced point cloud registration by providing robust and efficient methods that address the limitations of traditional approaches, including sensitivity to noise, outliers, and initialization. However, a well-constructed taxonomy for these methods is still lacking, making it difficult to systematically classify and compare the various approaches. In this paper, we present a comprehensive survey and taxonomy on deep learning-based point cloud registration (DL-PCR). We begin with a formal description of the point cloud registration problem, followed by an overview of the datasets,…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications
MethodsFocus · ALIGN
