A Real-Time Similarity Measure Model for Multi-source Trajectories

Lu Sun, W. Zhou, Baichen Jiang, J. Guan
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引用次数: 3

Abstract

In order to solve the problem that the similarity of asynchronous multi-source multi-track cannot be measured effectively, a new trajectory similarity model for asynchronous multi-source multi-track is proposed in this paper. Based on the idea of searching the potential matched data points under the spatial and temporal constraints, the optimal matched point is determined from the sets of nearly matched points by setting a certain spatial threshold and temporal threshold, and the similarity measure between multi-source trajectories is obtained. The spatial and temporal relation between potential matched points from multi-source trajectories has been totally considered. The temporal slots between potential mapped points are allowed, reducing the complexity sharply and ensuring the trajectory mapping accuracy. The application to a real data set shows that the model can evaluate the similarity of multi-source trajectory effectively, and its time cost is lower than traditional methods.
一种多源轨迹实时相似度度量模型
为了解决异步多源多航迹相似度无法有效测量的问题,提出了一种新的异步多源多航迹轨迹相似度模型。基于在时空约束下寻找潜在匹配数据点的思路,通过设置一定的空间阈值和时间阈值,从接近匹配的数据点集合中确定最优匹配点,并获得多源轨迹之间的相似度度量。充分考虑了多源轨迹潜在匹配点之间的时空关系。允许潜在映射点之间的时间间隙,大大降低了复杂性,保证了轨迹映射的精度。在实际数据集上的应用表明,该模型能有效地评估多源轨迹的相似度,且时间成本低于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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