Title :
Data-driven detection and context-based classification of maritime anomalies
Author :
Giuliana Pallotta;Anne-Laure Jousselme
Author_Institution :
NATO-STO Centre for Maritime Research and Experimentation (CMRE), La Spezia, Italy
fDate :
7/1/2015 12:00:00 AM
Abstract :
Discovering anomalies at sea is one of the critical tasks of Maritime Situational Awareness (MSA) activities and an important enabler for maritime security operations. This paper proposes a data-driven approach to anomaly detection, highlighting challenges specific to the maritime domain. This work builds on unsupervised learning techniques which provide models for normal traffic behaviour. A methodology to associate tracks to the derived traffic model is then presented. This is done by the pre-extraction of contextual information as the baseline patterns of life (i.e., routes) in the area under investigation. In addition to a brief description of the approach to derive the routes, their characterization and representation is presented in support of exploitable knowledge to classify anomalies. A hierarchical reasoning is proposed where new tracks are first associated to existing routes based on their positional information only and “off-route” vessels” are detected. Then, for on-route vessels further anomalies are detected such as “speed anomaly” or “heading anomaly”. The algorithm is illustrated and assessed on a real-world dataset supplemented with synthetic abnormal tracks.
Keywords :
"Trajectory","Tracking","Feature extraction","Radar tracking","Sea measurements","Data mining","Detectors"
Conference_Titel :
Information Fusion (Fusion), 2015 18th International Conference on