Title :
Unsupervised extraction of knowledge from S-AIS data for maritime situational awareness
Author :
Le Guillarme, Nicolas ; Lerouvreur, Xavier
Author_Institution :
Nat. Inst. of Appl. Sci., St. Étienne-du-Rouvray, France
Abstract :
Automatic vessel behaviour analysis is a key factor for maritime surveillance and relies on an efficient representation of knowledge about vessels activity. Emerging technologies such as space-based AIS provides a new dimension of service and creates a need for new methods able to learn a maritime scene model at an oceanic scale. In this paper, we propose such a framework: a probabilistic normalcy model of vessel dynamics is learned using unsupervised techniques applied on historical S-AIS data and used for anomaly detection and prediction tasks, thus providing functionalities for high-level situational awareness (level 2 and 3 of the JDL).
Keywords :
knowledge acquisition; knowledge representation; marine engineering; marine safety; marine vehicles; probability; security of data; surveillance; unsupervised learning; vehicle dynamics; anomaly detection; automatic vessel behaviour analysis; emerging technology; high-level situational awareness; historical S-AIS data; maritime scene model; maritime situational awareness; maritime surveillance; oceanic scale; prediction tasks; probabilistic normalcy model; space-based AIS; unsupervised knowledge extraction; unsupervised techniques; vessel activity; vessel dynamics; Clustering algorithms; Data models; Hidden Markov models; Length measurement; Marine vehicles; Surveillance; Trajectory;
Conference_Titel :
Information Fusion (FUSION), 2013 16th International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-605-86311-1-3