Title :
Behavioral learning of vessel types with fuzzy-rough decision trees
Author :
Falcon, Rafael ; Abielmona, Rami ; Blasch, Erik
Author_Institution :
Res. & Eng., Larus Technol. Corp., Ottawa, ON, Canada
Abstract :
A reliable and efficient characterization of vessel activities along coastal regions is of crucial importance for maritime domain awareness. With increased navigational flows across all waterways and the worldwide dissemination of active and passive vessel tracking modalities, learning a vessel´s behavior is becoming a strategic priority for maritime operators and decision makers. In this paper, we propose an interpretable computational model based on fuzzy-rough decision trees (FRDTs) to predict the vessel type given a summary vector in the form of descriptive track features that include kinematic, static and environmental information. The track summaries are generated from the fusion of Automatic Identification System (AIS), Synthetic Aperture Radar (SAR) and Canada weather reports. Our methodology uses fuzzy rough sets to discard irrelevant features on the basis of their dependency of the vessel type, prior to the iterative construction of the FRDT. Empirical results with a real-world data set in the east coast of North America confirm that the proposed approach is able to accurately assign the correct label (i.e., type) to previously unseen vessels in over 80% of the cases.
Keywords :
decision trees; fuzzy set theory; learning (artificial intelligence); marine engineering; rough set theory; AIS; Canada weather reports; FRDT; SAR; active vessel tracking modalities; automatic identification system; behavioral learning; fuzzy-rough decision trees; iterative construction; maritime domain awareness; passive vessel tracking modalities; synthetic aperture radar; vessel types; Data models; Decision trees; Pragmatics; Predictive models; Radar tracking; Rough sets; Target tracking; automatic identification system; behavioral learning; fuzzy decision trees; fuzzy rough sets; information fusion; machine learning; maritime domain awareness; track summaries;
Conference_Titel :
Information Fusion (FUSION), 2014 17th International Conference on
Conference_Location :
Salamanca