论文标题

基于海洋容器自动识别系统数据的时空轨道关联算法

A Spatio-temporal Track Association Algorithm Based on Marine Vessel Automatic Identification System Data

论文作者

Ahmed, Imtiaz, Jun, Mikyoung, Ding, Yu

论文摘要

在动态威胁环境中实时跟踪多个移动对象是国家安全和监视系统中的重要因素。它有助于查明和区分潜在的候选人与其他正常物体的构成威胁,并监视异常轨迹,直到干预为止。为了找到异常运动模式,需要具有准确的数据关联算法,该算法可以将位置和运动的顺序观察与基础移动对象相关联,因此,随着对象的移动,构建对象的轨迹。在这项工作中,我们开发了一种时空方法,用于跟踪海事血管,因为该容器的位置和运动观测是通过自动识别系统收集的。提出的方法是为了应对数据关联挑战的一种努力,在该挑战中,有目的地抑制船只和船舶识别的数量,并在数据集中创建时间差距,以模仿威胁环境下现实生活中的运营复杂性。挑战中提供了三个培训数据集和五个测试集,并且数据挑战组织者为参与者开发的结果而设计了一组定量性能指标。当我们提出的轨道关联算法应用于五个测试集时,该算法得分非常具竞争力。

Tracking multiple moving objects in real-time in a dynamic threat environment is an important element in national security and surveillance system. It helps pinpoint and distinguish potential candidates posing threats from other normal objects and monitor the anomalous trajectories until intervention. To locate the anomalous pattern of movements, one needs to have an accurate data association algorithm that can associate the sequential observations of locations and motion with the underlying moving objects, and therefore, build the trajectories of the objects as the objects are moving. In this work, we develop a spatio-temporal approach for tracking maritime vessels as the vessel's location and motion observations are collected by an Automatic Identification System. The proposed approach is developed as an effort to address a data association challenge in which the number of vessels as well as the vessel identification are purposely withheld and time gaps are created in the datasets to mimic the real-life operational complexities under a threat environment. Three training datasets and five test sets are provided in the challenge and a set of quantitative performance metrics is devised by the data challenge organizer for evaluating and comparing resulting methods developed by participants. When our proposed track association algorithm is applied to the five test sets, the algorithm scores a very competitive performance.

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