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A Novel Similarity Measure for Clustering Vessel Trajectories Based on Dynamic Time Warping

机译:基于动态时间规整的舰船轨迹聚类新方法

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摘要

Clustering methods that use a similarity measurement for evaluating vessel trajectories are important for mining spatial distribution information in water transportation. To better measure the similarity of vessel trajectories, a novel similarity measure is proposed based on the dynamic time warping distance, which considers the course change of track points and the meaning at the route level. Parallel experiments were conducted based on a month of Automatic Identification System (AIS) data collected from the Zhoushan Islands area, China. After evaluation of the accuracy and the cluster degree, the novel measure demonstrated its capabilities for distinguishing different vessel trajectories and detecting similar vessel trajectories with high accuracy and has a better performance compared to some existing methods.
机译:使用相似性度量来评估船只轨迹的聚类方法对于挖掘水运中的空间分布信息非常重要。为了更好地度量船舶轨迹的相似性,提出了一种基于动态时间规整距离的新颖相似性度量,该度量考虑了航迹的航向变化和航路水平的含义。基于从中国舟山群岛地区收集的一个月的自动识别系统(AIS)数据进行了平行实验。经过对精度和聚类程度的评估,该新方法证明了其能够区分不同船只轨迹并以高精度检测相似船只轨迹的能力,并且与某些现有方法相比具有更好的性能。

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