QuadricsReg: Large-Scale Point Cloud Registration using Quadric Primitives
Ji Wu, Huai Yu, Shu Han, Xi-Meng Cai, Ming-Feng Wang, Wen Yang,, Gui-Song Xia

TL;DR
QuadricsReg introduces a novel large-scale point cloud registration method using quadric primitives for efficient, robust, and accurate scene alignment across diverse datasets and sensor types.
Contribution
The paper proposes a new registration approach leveraging quadric primitives for symbolic scene representation, improving robustness and efficiency in large-scale point cloud registration.
Findings
High registration success rates across multiple datasets
Minimal registration errors achieved
Robust performance on heterogeneous LiDAR data
Abstract
In the realm of large-scale point cloud registration, designing a compact symbolic representation is crucial for efficiently processing vast amounts of data, ensuring registration robustness against significant viewpoint variations and occlusions. This paper introduces a novel point cloud registration method, i.e., QuadricsReg, which leverages concise quadrics primitives to represent scenes and utilizes their geometric characteristics to establish correspondences for 6-DoF transformation estimation. As a symbolic feature, the quadric representation fully captures the primary geometric characteristics of scenes, which can efficiently handle the complexity of large-scale point clouds. The intrinsic characteristics of quadrics, such as types and scales, are employed to initialize correspondences. Then we build a multi-level compatibility graph set to find the correspondences using the…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · 3D Shape Modeling and Analysis · Image Processing and 3D Reconstruction
MethodsSparse Evolutionary Training
