Contextual behavioural modelling and classification of vessels in a maritime piracy situation

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University of Pretoria

Abstract

In this study, a method is developed for modelling and classifying behaviour of maritime vessels in a piracy situation. Prior knowledge is used to construct a probabilistic graphical model of maritime vessel behaviour. This model is a novel variant of a dynamic Bayesian network (DBN), that extends the switching linear dynamic system (SLDS) to accommodate contextual information. A generative model and a classifier model are developed. The purpose of the generative model is to generate simulated data by modelling the behaviour of fishing vessels, transport vessels and pirate vessels in a maritime piracy situation. The vessels move, interact and perform various activities on a predefined map. A novel methodology for evaluating and optimising the generative model is proposed. This methodology can easily be adapted to other applications. The model is evaluated by comparing simulation results with 2011 pirate attack reports. The classifier model classifies maritime vessels into predefined categories according to their behaviour. The classification is performed by inferring the class of a vessel as a fishing, transport or pirate vessel class. The classification method is evaluated by classifying the data generated by the generative model and comparing it to the true classes of the simulated vessels.

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Thesis (PhD)--University of Pretoria, 2014.

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UCTD, Maritime Domain Awareness, Maritime piracy, Behavioural Modelling, Sequential Analysis, Switching Linear Dynamic System, Information Fusion, Dynamic Bayesian Network

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Dabrowski, JJ 2014, Contextual behavioural modelling and classification of vessels in a maritime piracy situation, PhD Thesis, University of Pretoria, Pretoria, viewed yymmdd <http://hdl.handle.net/2263/45902>