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Machine learning for vessel trajectories using compression, alignments and domain knowledge

机译:使用压缩,对齐和领域知识对船只轨迹进行机器学习

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摘要

In this paper we present a machine learning framework to analyze moving object trajectories from maritime vessels. Within this framework we perform the tasks of clustering, classification and outlier detection with vessel trajectory data. First, we apply a piecewise linear segmentation method to the trajectories to compress them. We adapt an existing technique to better retain stop and move information and show the better performance of our method with experimental results. Second, we use a similarity based approach to perform the clustering, classification and outlier detection tasks using kernel methods. We present experiments that investigate different alignment kernels and the effect of piecewise linear segmentation in the three different tasks. The experimental results show that compression does not negatively impact task performance and greatly reduces computation time for the alignment kernels. Finally, the alignment kernels allow for easy integration of geographical domain knowledge. In experiments we show that this added domain knowledge enhances performance in the clustering and classification tasks.
机译:在本文中,我们提出了一种机器学习框架来分析海上船只的运动对象轨迹。在此框架内,我们使用船只轨迹数据执行聚类,分类和离群值检测的任务。首先,我们对轨迹应用分段线性分割方法以对其进行压缩。我们采用现有技术来更好地保留停靠和移动信息,并通过实验结果展示出我们方法的更好性能。其次,我们使用基于相似性的方法来使用内核方法执行聚类,分类和离群值检测任务。我们目前进行的实验研究了三个不同任务中不同的对齐核以及分段线性分段的影响。实验结果表明,压缩不会对任务性能产生负面影响,并且可以大大减少对齐内核的计算时间。最后,对齐内核可轻松集成地理域知识。在实验中,我们证明了这种新增的领域知识可以提高聚类和分类任务的性能。

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