Maritime anomaly detection based on mean-reverting stochastic processes applied to a real-world scenario
A novel anomaly detection procedure based on the Ornstein-Uhlenbeck (OU) mean-reverting stochastic process is presented. The considered anomaly is a vessel that deviates from a planned route, changing its nominal velocity v0 . In order to hide this behavior, the vessel switches off its automatic identification system (AIS) device for a time T and then tries to revert to the previous nominal velocity v0. The decision that has to be made is declaring that a deviation either happened or not, relying only upon two consecutive AIS contacts. Furthermore, the extension to the scenario in which multiple contacts (e.g., radar) are available during the time period T is also considered. A proper statistical hypothesis testing procedure that builds on the changes in the OU process long-term velocity parameter v0 of the vessel is the core of the proposed approach and enables the solution of the anomaly detection problem. Closed analytical forms are provided for the detection and false alarm probabilities of the hypothesis test.
SourceIn: Proceedings of the 21st International Conference on Information Fusion (FUSION 2018), Cambridge 2018, pp. 1171-1177, doi: 10.23919/ICIF.2018.8455854
Willett, Peter K.