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Robust Angular Synchronization via Directed Graph Neural Networks

9 October 2023
Yixuan He
Gesine Reinert
David Wipf
Mihai Cucuringu
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Abstract

The angular synchronization problem aims to accurately estimate (up to a constant additive phase) a set of unknown angles θ1,…,θn∈[0,2π)\theta_1, \dots, \theta_n\in[0, 2\pi)θ1​,…,θn​∈[0,2π) from mmm noisy measurements of their offsets θi−θj  \mboxmod  2π.\theta_i-\theta_j \;\mbox{mod} \; 2\pi.θi​−θj​\mboxmod2π. Applications include, for example, sensor network localization, phase retrieval, and distributed clock synchronization. An extension of the problem to the heterogeneous setting (dubbed kkk-synchronization) is to estimate kkk groups of angles simultaneously, given noisy observations (with unknown group assignment) from each group. Existing methods for angular synchronization usually perform poorly in high-noise regimes, which are common in applications. In this paper, we leverage neural networks for the angular synchronization problem, and its heterogeneous extension, by proposing GNNSync, a theoretically-grounded end-to-end trainable framework using directed graph neural networks. In addition, new loss functions are devised to encode synchronization objectives. Experimental results on extensive data sets demonstrate that GNNSync attains competitive, and often superior, performance against a comprehensive set of baselines for the angular synchronization problem and its extension, validating the robustness of GNNSync even at high noise levels.

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