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Unsupervised extraction of maritime patterns of life from Automatic Identification System data

机译:从自动识别系统数据中无监督提取海洋生物模式

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This paper presents an unsupervised approach to extract maritime Patterns of Life (PoL) from historical Automatic Identification System (AIS) data based on a low-dimensional synthetic representation of ship routes. Recent advances in long-term vessel motion modeling through Ornstein-Uhlenbeck mean-reverting stochastic processes allow to encode knowledge about maritime traffic via a compact graph-based model where waypoints are graph vertices and the connections between them, i.e., the navigational legs, are graph edges. The resulting directed graph ultimately leads to the detection and statistical characterization of recurrent maritime traffic patterns. To demonstrate its effectiveness and applicability to real-world case studies, the proposed methodology has been tested on two extensive AIS datasets, collected in the areas of two operational trials of EU-H2020's MARISA (Maritime Integrated Surveillance Awareness) project.
机译:本文提出了一种无监督的方法,该方法基于船舶路线的低维综合表示从历史自动识别系统(AIS)数据中提取海洋生命模式(PoL)。通过Ornstein-Uhlenbeck均值回复随机过程进行的长期船舶运动建模的最新进展允许通过基于紧凑的基于图的模型对有关海上交通的知识进行编码,其中航路点是图的顶点,它们之间的连接即导航腿图形的边缘。最终的有向图最终导致对经常性海上交通模式的检测和统计表征。为了证明该方法的有效性和适用于现实世界的案例研究,已对两个广泛的AIS数据集进行了测试,该方法集是在EU-H2020的MARISA(海上综合监视意识)项目的两次运营试验中收集的。

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