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Curvature Maxima-based Trajectories Mining

机译:基于曲率极大值的轨迹挖掘

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摘要

In this paper, we present a method for trajectories mining that utilizes a multiscale comparison scheme based on curvature maxima. The method firstly identifies curvature maxima on a trajectory and traces their positions across scales in order to recognize the multiscale structure of the trajectory. Next, it searches for the structurally best matches between two input trajectories by comparing their sub trajectories in a cross-scale manner. After that, it calculates the value-based dissimilarity for each pair of the matched patrial trajectories and aggregates them into the final dissimilarity between the two trajectories. We evaluated this method on the UCI character trajectory dataset and on a real-world medical dataset. Experimental results showed that the method yielded good clustering results comparable to DTW and provided interesting clusters that might reflect the distribution of fibrotic stages.
机译:在本文中,我们提出了一种利用基于曲率最大值的多尺度比较方案进行轨迹挖掘的方法。该方法首先识别轨迹上的曲率最大值,并跨尺度跟踪其位置,以便识别轨迹的多尺度结构。接下来,它通过跨尺度比较两个子轨迹来搜索两个输入轨迹之间的结构上最佳匹配。然后,它为每对匹配的父系轨迹计算基于值的差异,并将它们汇总为两条轨迹之间的最终差异。我们在UCI字符轨迹数据集和现实医学数据集上评估了该方法。实验结果表明,该方法产生了与DTW相当的良好聚类结果,并提供了可能反映纤维化阶段分布的有趣聚类。

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