Learning Motion Patterns in AIS Data and Detecting Anomalous Vessel Behavior

Anton Kullberg, I. Skog, Gustaf Hendeby
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引用次数: 2

Abstract

A new approach to anomaly detection in maritime traffic based on Automatic Identification System (AIS) data is proposed. The method recursively learns a model of the nominal vessel routes from AIS data and simultaneously estimates the current state of the vessels. A distinction between anomalies and measurement outliers is made and a method to detect and distinguish between the two is proposed. The anomaly and outlier detection is based on statistical testing relative to the current motion model. The proposed method is evaluated on historical AIS data from a coastal area in Sweden and is shown to detect previously unseen motions.
学习AIS数据中的运动模式和检测异常船只行为
提出了一种基于AIS数据的海上交通异常检测新方法。该方法从AIS数据中递归学习标称船舶航线模型,同时估计船舶的当前状态。对异常和测量异常值进行了区分,并提出了一种检测和区分两者的方法。异常和离群点检测是基于相对于当前运动模型的统计检验。该方法在瑞典沿海地区的历史AIS数据上进行了评估,并被证明可以检测到以前未见过的运动。
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