Performance Guarantees for Spectral Initialization in Rotation Averaging and Pose-Graph SLAM
Kevin J. Doherty, David M. Rosen, John J. Leonard

TL;DR
This paper introduces spectral initialization methods with explicit performance guarantees for pose-graph SLAM and rotation averaging, improving reliability and efficiency over heuristic approaches.
Contribution
It develops a spectral relaxation approach for SLAM and RA, providing theoretical bounds on estimation accuracy and demonstrating practical effectiveness.
Findings
Spectral initialization achieves comparable or better accuracy than existing methods.
Theoretical bounds relate estimation error to measurement noise and graph properties.
Spectral methods are computationally efficient and robust in practice.
Abstract
In this work we present the first initialization methods equipped with explicit performance guarantees adapted to the pose-graph simultaneous localization and mapping (SLAM) and rotation averaging (RA) problems. SLAM and rotation averaging are typically formalized as large-scale nonconvex point estimation problems, with many bad local minima that can entrap the smooth optimization methods typically applied to solve them; the performance of standard SLAM and RA algorithms thus crucially depends upon the quality of the estimates used to initialize this local search. While many initialization methods for SLAM and RA have appeared in the literature, these are typically obtained as purely heuristic approximations, making it difficult to determine whether (or under what circumstances) these techniques can be reliably deployed. In contrast, in this work we study the problem of initialization…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Indoor and Outdoor Localization Technologies · Target Tracking and Data Fusion in Sensor Networks
