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Handcrafted Local Feature Descriptor-Based Point Cloud Registration and Its Applications: A Review

Wuyong Tao, Ruisheng Wang, Xianghong Hua, Jingbin Liu, Xijiang Chen, Yufu Zang, Dong Chen, Dong Xu, Bufan Zhao

2025IEEE Transactions on Visualization and Computer Graphics8 citationsDOI

Abstract

Point cloud registration serves as a fundamental problem across multiple fields including computer vision, computer graphics, and remote sensing. While local feature descriptors (LFDs) have long been established as a cornerstone for point cloud registration and the LFD-based approach has been extensively studied, the field has witnessed significant advancements in recent years. Despite these developments, the research community lacks a systematic review to consolidate these contributions, leaving many researchers unaware of recent progress in LFD-based registration. To address this gap, we present a comprehensive review that critically examines both state-of-the-art and widely referenced methods across all subtasks of LFD-based registration. Our work provides: (1) an extensive survey of existing methodologies, (2) in-depth analysis of their respective strengths and limitations, (3) insightful observations and practical recommendations, and (4) a thorough summary of relevant applications and publicly available datasets. This systematic overview offers valuable guidance for researchers pursuing future investigations in this domain.

Topics & Concepts

Computer sciencePoint cloudFeature (linguistics)Cloud computingPoint (geometry)Artificial intelligenceImage registrationComputer visionLinguisticsImage (mathematics)MathematicsGeometryOperating systemPhilosophyImage Processing and 3D Reconstruction3D Shape Modeling and AnalysisRemote Sensing and LiDAR Applications
Handcrafted Local Feature Descriptor-Based Point Cloud Registration and Its Applications: A Review | Litcius