A Contextually Supported Abnormality Detector for Maritime Trajectories

Author:

Olesen Kristoffer Vinther1ORCID,Boubekki Ahcène2ORCID,Kampffmeyer Michael C.2ORCID,Jenssen Robert234ORCID,Christensen Anders Nymark1ORCID,Hørlück Sune5,Clemmensen Line H.1ORCID

Affiliation:

1. Applied Mathematics and Computer Science, Technical University of Denmark, 2800 Kgs. Lyngby, Denmark

2. Machine Learning Group, UiT The Arctic University of Norway, 9019 Tromsø, Norway

3. Pioneer Centre for AI, University of Copenhagen, 1350 Copenhagen, Denmark

4. Norwegian Computing Center, 0373 Oslo, Norway

5. Terma A/S, 8520 Lystrup, Denmark

Abstract

The analysis of maritime traffic patterns for safety and security purposes is increasing in importance and, hence, Vessel Traffic Service operators need efficient and contextualized tools for the detection of abnormal maritime behavior. Current models lack interpretability and contextualization of their predictions and are generally not quantitatively evaluated on a large annotated dataset comprising all expected traffic in a Region of Interest. We propose a model for the detection of abnormal maritime behaviors that provides the closest behaviors as context to the predictions. The normalcy model relies on two-step clustering, which is first computed based on the positions of the vessels and then refined based on their kinematics. We design for each step a similarity measure, which combined are able to distinguish boats cruising shipping lanes in different directions, but also vessels with more freedom, such as pilot boats. Our proposed abnormality detection model achieved, on a large annotated dataset extracted from AIS logs that we publish, an ROC-AUC of 0.79, which is on a par with State-of-the-Art deep neural networks, while being more computationally efficient and more interpretable, thanks to the contextualization offered by our two-step clustering.

Funder

Danish Ministry of Defence Acquisition and Logistics Organisation

Research Council of Norway

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference40 articles.

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2. Asariotis, R., Benamara, H., Lavelle, J., and Premti, A. (2023, October 20). Maritime Piracy. Part I: An Overview of Trends, Costs and Trade-Related Implications. UNCTAD 2014. Available online: https://eprints.soton.ac.uk/368254/.

3. Could the accident of “Ever Given” have been avoided in the Suez Canal?;Lebedev;J. Phys. Conf. Ser.,2021

4. European Maritime Safety Agency (2022). Annual Overview of Marine Casualties and Incidents, Technical Report.

5. Approaches to combatting illegal, unreported and unregulated fishing;Long;Nat. Food,2020

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