Anomaly Detection of Trajectories with Kernel Density Estimation by Conformal Prediction - Artificial Intelligence Applications and Innovations (AIAI 2014 - Workshops:CoPA,MHDW, IIVC, and MT4BD) Access content directly
Conference Papers Year : 2014

Anomaly Detection of Trajectories with Kernel Density Estimation by Conformal Prediction

James Smith
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  • PersonId : 992375
Ilia Nouretdinov
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  • PersonId : 992376
Rachel Craddock
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  • PersonId : 992377
Charles Offer
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  • PersonId : 992378
Alexander Gammerman
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  • PersonId : 992379

Abstract

This paper describes conformal prediction techniques for detecting anomalous trajectories in the maritime domain. The data used in experiments were obtained from Automatic Identification System (AIS) broadcasts – a system for tracking vessel locations. A dimensionality reduction package is used and a kernel density estimation function as a non-conformity measure has been applied to detect anomalies. We propose average p-value as an efficiency criteria for conformal anomaly detection. A comparison with a k-nearest neighbours non-conformity measure is presented and the results are discussed.
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hal-01391054 , version 1 (02-11-2016)

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James Smith, Ilia Nouretdinov, Rachel Craddock, Charles Offer, Alexander Gammerman. Anomaly Detection of Trajectories with Kernel Density Estimation by Conformal Prediction. 10th IFIP International Conference on Artificial Intelligence Applications and Innovations (AIAI), Sep 2014, Rhodes, Greece. pp.271-280, ⟨10.1007/978-3-662-44722-2_29⟩. ⟨hal-01391054⟩
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