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Abnormal vessel behavior detection in port areas based on Dynamic Bayesian Networks

机译:基于动态贝叶斯网络的港口区域船舶行为异常检测

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Automatic recognition of abnormal situations in harbor environments is approached in this paper with a system based on Dynamic Bayesian Networks. The area under surveillance is partitioned in zones of different sizes and shapes by means of an Instantaneous Topological Map, on which events are detected and inference is carried out. The model is trained with synthetic normal trajectories of ships and vessels mooring in the port, and each time a new trajectory is presented to the system, comparisons with the normal behaviors stored in the network are performed. If no match is found, an abnormal situation is declared and countermeasures can be taken. The algorithm has been tested in a real port with simulated data in order to evaluate the false alarm rate and the abnormal detection capabilities of the proposed approach.
机译:本文利用基于动态贝叶斯网络的系统对港口环境中的异常情况进行自动识别。监视区域通过即时拓扑图划分为不同大小和形状的区域,在该区域上可以检测到事件并进行推断。该模型使用船舶停泊在港口的船舶的合成法线轨迹进行训练,每次向系统显示新轨迹时,都会与网络中存储的法线行为进行比较。如果未找到匹配项,则表明异常情况并可以采取对策。该算法已在带有模拟数据的真实端口中进行了测试,以评估所提出方法的误报率和异常检测能力。

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