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RESEARCH ON SHIP TRAJECTORY EXTRACTION BASED ON MULTI-ATTRIBUTE DBSCAN OPTIMISATION ALGORITHM

机译:基于多属性DBSCAN优化算法的船舶轨迹提取研究

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摘要

With the vigorous development of maritime traffic, the importance of maritime navigation safety is increasing day by day. Ship trajectory extraction and analysis play an important role in ensuring navigation safety. At present, the DBSCAN (density-based spatial clustering of applications with noise) algorithm is the most common method in the research of ship trajectory extraction, but it has shortcomings such as missing ship trajectories in the process of trajectory division. The improved multi-attribute DBSCAN algorithm avoids trajectory division and greatly reduces the probability of missing sub-trajectories. By introducing the position, speed and heading of the ship track point, dividing the complex water area and vectorising the ship track, the function of guaranteeing the track integrity can be achieved and the ship clustering effect can be better realised. The result shows that the cluster fitting effect reaches up to 99.83%, which proves that the multi-attribute DBSCAN algorithm and cluster analysis algorithm have higher reliability and provide better theoretical guidance for the analysis of ship abnormal behaviour.
机译:随着海上交通的蓬勃发展,海上导航安全的重要性日益增加。船舶轨迹提取和分析在确保导航安全方面发挥着重要作用。目前,DBSCAN(基于密度为基于噪声的空间聚类)算法是船舶轨迹提取研究中最常见的方法,但它具有缺失船舶划分过程中缺失的船舶轨迹等缺点。改进的多属性DBSCAN算法避免了轨迹划分,大大降低了缺失子轨迹的概率。通过介绍船舶轨道点的位置,速度和标题,将复杂的水域分开和向外船闸轨道,可以实现保证轨道完整性的功能,并且可以更好地实现船舶聚类效果。结果表明,集群拟合效应达到高达99.83%,这证明了多属性DBSCAN算法和集群分析算法具有更高的可靠性,并为船舶异常行为分析提供更好的理论指导。

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