TL;DR
This paper introduces SE-Sync, a certifiably optimal algorithm for pose synchronization over the special Euclidean group, capable of recovering global solutions efficiently in noisy conditions and certifying their optimality.
Contribution
The paper develops a semidefinite relaxation and specialized optimization scheme that guarantees globally optimal solutions for synchronization problems in polynomial time under certain noise thresholds.
Findings
SE-Sync recovers globally optimal solutions in high-noise scenarios.
The algorithm scales efficiently with problem size.
Experimental results validate the method's robustness and computational efficiency.
Abstract
Many geometric estimation problems take the form of synchronization over the special Euclidean group: estimate the values of a set of poses given noisy measurements of a subset of their pairwise relative transforms. This problem is typically formulated as a maximum-likelihood estimation that requires solving a nonconvex nonlinear program, which is computationally intractable in general. Nevertheless, in this paper we present an algorithm that is able to efficiently recover certifiably globally optimal solutions of this estimation problem in a non-adversarial noise regime. The crux of our approach is the development of a semidefinite relaxation of the maximum-likelihood estimation whose minimizer provides the exact MLE so long as the magnitude of the noise corrupting the available measurements falls below a certain critical threshold; furthermore, whenever exactness obtains, it is…
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