Litcius/Paper detail

Fast and parameter-light rare behavior detection in maritime trajectories

Fei Wang, Yifan Lei, Zhenguang Liu, Xun Wang, Shouling Ji, Anthony K. H. Tung

2020Information Processing & Management20 citationsDOIOpen Access PDF

Abstract

Rare behaviors indicate important events and situations in maritime surveillance applications. State-of-the-art methods provide many effective solutions to detect anomalous behaviors. Meanwhile, most solutions are parameter-laden and too costly to identify useful rare behaviors with human knowledge in a visual analytics manner. This paper is concerned with a scheme cross trajectories, vessel attributes and the movement context for detecting rare behaviors through preprocessing, kNN-based clustering, and verification. Although the scheme involves several parameters, we demonstrate that they are able to be tackled in thresholds. As a result, a rare behavior factor is the single parameter that affect the detecting results. The proposed scheme is evaluated via a simulated data set for performance and a real life AIS data for effectiveness. Results show that high accuracy to labelled anomalies and useful rare behaviors can be achieved.

Topics & Concepts

Computer sciencePreprocessorCluster analysisScheme (mathematics)Context (archaeology)Set (abstract data type)Rare eventsArtificial intelligenceData miningData setMachine learningStatisticsMathematicsMathematical analysisBiologyPaleontologyProgramming languageMaritime Navigation and SafetyAnomaly Detection Techniques and ApplicationsArtificial Immune Systems Applications