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A Novel Trajectory Pattern Learning Method Based on Sequential Pattern Mining

机译:一种基于顺序模式挖掘的新型轨迹模式学习方法

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Trajectory pattern learning is an important and meaningful issue for intelligent visual surveillance system. This paper puts forward a novel trajectory pattern learning method through sequential pattern mining. In our method, the flow vectors are firstly quantified by fuzzy C means clustering method; then a modified Prefixspan algorithm is applied to mine the sequential patterns from the trajectory sequences; finally, an approximate string matching method is adopted to detect whether a given trajectory is anomaly or not. The simulation experiments on different scenes demonstrate that our method is feasible and effective.
机译:轨迹模式学习是智能视觉监控系统的一个重要而有意义的问题。本文通过顺序模式挖掘提出了一种新颖的轨迹模式学习方法。在我们的方法中,通过模糊C表示聚类方法首先量化流量矢量;然后应用修改后的前缀算法以从轨迹序列挖掘顺序模式;最后,采用近似串匹配方法来检测给定的轨迹是否是异常的。不同场景的模拟实验表明我们的方法是可行和有效的。

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