ICOS: Efficient and Highly Robust Rotation Search and Point Cloud Registration with Correspondences
Lei Sun

TL;DR
ICOS is a novel, efficient, and robust solver for rotation search and point cloud registration that effectively handles extreme outlier ratios using compatible structures and invariant-based filtering.
Contribution
The paper introduces compatible structures and three frameworks for robust outlier filtering in rotation search and point cloud registration, improving speed and accuracy.
Findings
Handles over 95% outliers effectively
Achieves nearly 100% inlier recall
Outperforms state-of-the-art methods in accuracy and robustness
Abstract
Rotation search and point cloud registration are two fundamental problems in robotics and computer vision, which aim to estimate the rotation and the transformation between the 3D vector sets and point clouds, respectively. Due to the presence of outliers, probably in very large numbers, among the putative vector or point correspondences in real-world applications, robust estimation is of great importance. In this paper, we present ICOS (Inlier searching using COmpatible Structures), a novel, efficient and highly robust solver for both the correspondence-based rotation search and point cloud registration problems. Specifically, we (i) propose and construct a series of compatible structures for the two problems where various invariants can be established, and (ii) design three time-efficient frameworks, the first for rotation search, the second for known-scale registration and the third…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · 3D Surveying and Cultural Heritage · Inertial Sensor and Navigation
