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Bayesian track-to-graph association for maritime traffic monitoring
Maritime surveillance
Ship tracking
Maritime route prediction
Bayesian statistical decision theory
Stochastic processes
Graph theory
Raffaele Grasso, Leonardo M. Millefiori, Paolo Braca
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Maritime surveillance
Ship tracking
Maritime route prediction
Bayesian statistical decision theory
Stochastic processes
Graph theory
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