OLAE-ICP: Robust and fast alignment of geometric features with the optimal linear attitude estimator
Jose Luis Blanco-Claraco

TL;DR
This paper presents OLAE-ICP, a robust and efficient method for aligning geometric features in point-cloud registration and attitude estimation, leveraging optimal linear estimators and robust outlier handling.
Contribution
It introduces a novel linear attitude estimator (OLAE) integrated into ICP for geometric feature alignment, improving robustness and computational efficiency.
Findings
OLAE effectively recovers optimal attitude with small linear systems.
The approach handles outliers and primitive weights, enhancing robustness.
Experiments show competitive noise tolerance and real dataset validation.
Abstract
The problems of point-cloud registration and attitude estimation from vector observations (Wahba's problem) have widespread applications in computer vision and mobile robotics. This work introduces a simple approach for integrating sets of geometric feature observations (points, lines, and planes) in such a way that any solution to either point-cloud registration or to Wahba's problem can be used to find the SE(3) transformation between the two sets that minimizes the corresponding cost function. We compare the performance of three solutions: classic Horn's optimal quaternion method, Optimal Linear Attitude Estimator (OLAE) that efficiently recovers the optimal Gibbs-Rodrigues vector solving a small linear system, and an iterative non-linear Gauss-Newton solver. Special care is given to explain how to overcome the Gibbs vector singularity for OLAE by using the method of sequential…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Inertial Sensor and Navigation · Advanced Vision and Imaging
