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Main Authors: Gräupl, Thomas, Reisenbauer, Andreas, Hecko, Marcel, Rasouli, Anil, Graser, Anita, Dragaschnig, Melitta, Weissenfeld, Axel, Dejaegere, Gilles, Sakr, Mahmoud
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.03584
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author Gräupl, Thomas
Reisenbauer, Andreas
Hecko, Marcel
Rasouli, Anil
Graser, Anita
Dragaschnig, Melitta
Weissenfeld, Axel
Dejaegere, Gilles
Sakr, Mahmoud
author_facet Gräupl, Thomas
Reisenbauer, Andreas
Hecko, Marcel
Rasouli, Anil
Graser, Anita
Dragaschnig, Melitta
Weissenfeld, Axel
Dejaegere, Gilles
Sakr, Mahmoud
contents This paper presents the VesselEdge system, which leverages federated learning and bandwidth-constrained trajectory compression to enhance maritime situational awareness by extending AIS coverage. VesselEdge transforms vessels into mobile sensors, enabling real-time anomaly detection and efficient data transmission over low-bandwidth connections. The system integrates the M3fed model for federated learning and the BWC-DR-A algorithm for trajectory compression, prioritizing anomalous data. Preliminary results demonstrate the effectiveness of VesselEdge in improving AIS coverage and situational awareness using historical data.
format Preprint
id arxiv_https___arxiv_org_abs_2512_03584
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Federated Learning and Trajectory Compression for Enhanced AIS Coverage
Gräupl, Thomas
Reisenbauer, Andreas
Hecko, Marcel
Rasouli, Anil
Graser, Anita
Dragaschnig, Melitta
Weissenfeld, Axel
Dejaegere, Gilles
Sakr, Mahmoud
Machine Learning
This paper presents the VesselEdge system, which leverages federated learning and bandwidth-constrained trajectory compression to enhance maritime situational awareness by extending AIS coverage. VesselEdge transforms vessels into mobile sensors, enabling real-time anomaly detection and efficient data transmission over low-bandwidth connections. The system integrates the M3fed model for federated learning and the BWC-DR-A algorithm for trajectory compression, prioritizing anomalous data. Preliminary results demonstrate the effectiveness of VesselEdge in improving AIS coverage and situational awareness using historical data.
title Federated Learning and Trajectory Compression for Enhanced AIS Coverage
topic Machine Learning
url https://arxiv.org/abs/2512.03584