DANIEL: A Fast and Robust Consensus Maximization Method for Point Cloud Registration with High Outlier Ratios
Lei Sun

TL;DR
DANIEL is a novel, fast RANSAC-based method for robust point cloud registration that effectively handles extremely high outlier ratios through a double-layered sampling and compatibility testing approach.
Contribution
The paper introduces DANIEL, a two-layered consensus maximization algorithm that significantly improves robustness and efficiency in point cloud registration with high outlier ratios.
Findings
DANIEL handles over 99% outliers effectively.
It is faster than existing methods like RANSAC, FGR, GORE.
Demonstrates robustness across multiple real datasets.
Abstract
Correspondence-based point cloud registration is a cornerstone in geometric computer vision, robotics perception, photogrammetry and remote sensing, which seeks to estimate the best rigid transformation between two point clouds from the correspondences established over 3D keypoints. However, due to limited robustness and accuracy, current 3D keypoint matching techniques are very prone to yield outliers, probably even in very large numbers, making robust estimation for point cloud registration of great importance. Unfortunately, existing robust methods may suffer from high computational cost or insufficient robustness when encountering high (or even extreme) outlier ratios, hardly ideal enough for practical use. In this paper, we present a novel time-efficient RANSAC-type consensus maximization solver, named DANIEL (Double-layered sAmpliNg with consensus maximization based on stratIfied…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · 3D Surveying and Cultural Heritage · Image and Object Detection Techniques
