Efficient and Consistent Bundle Adjustment on Lidar Point Clouds
Zheng Liu, Xiyuan Liu, Fu Zhang

TL;DR
This paper introduces an efficient, consistent bundle adjustment method for lidar sensors that uses scene features and point clusters to reduce computation, improve accuracy, and estimate pose uncertainty.
Contribution
It proposes a novel BA formulation using scene features and point clusters, with a second-order solver that is more efficient and provides pose uncertainty estimates.
Findings
Reduces optimization dimension via analytical feature solutions.
Develops a second-order BA solver with theoretical guarantees.
Achieves efficient and consistent lidar pose estimation.
Abstract
Bundle Adjustment (BA) refers to the problem of simultaneous determination of sensor poses and scene geometry, which is a fundamental problem in robot vision. This paper presents an efficient and consistent bundle adjustment method for lidar sensors. The method employs edge and plane features to represent the scene geometry, and directly minimizes the natural Euclidean distance from each raw point to the respective geometry feature. A nice property of this formulation is that the geometry features can be analytically solved, drastically reducing the dimension of the numerical optimization. To represent and solve the resultant optimization problem more efficiently, this paper then proposes a novel concept {\it point clusters}, which encodes all raw points associated to the same feature by a compact set of parameters, the {\it point cluster coordinates}. We derive the closed-form…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Measurement and Metrology Techniques · Advanced Optical Sensing Technologies
