A parallel clustering and test partitioning techniques based mining trajectory algorithm for moving objects

Qian He, Yiting Chen, Qinghe Dong, Dongsheng Cheng
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引用次数: 1

Abstract

In recent years, the intelligent transportation system has been widely used to deal with traffic problems. The analysis of traffic incident is important in intelligent transportation field, and gathering patterns can model various traffic incidents. However, with the increasing amount of moving trajectory data, the traditional mining algorithms of gathering patterns cannot effectively analyze trajectory data. In this paper, we propose a parallel algorithm RDD-Gathering to discover the gathering patterns in massive trajectory data. Based on the algorithm, we further design a system framework of traffic incident analysis and prediction, which can realize the prediction of the abnormal traffic events. Finally, the accuracy and efficiency of the proposed algorithms are validated by extensive experiments based on a real trajectory dataset, and the results of experiments show that the proposed method can effectively improve the efficiency of gathering retrieval.
一种基于并行聚类和测试划分技术的运动目标轨迹挖掘算法
近年来,智能交通系统被广泛应用于解决交通问题。交通事件分析是智能交通领域的重要研究内容,数据采集模式可以对各种交通事件进行建模。然而,随着运动轨迹数据量的不断增加,传统的采集模式挖掘算法无法有效地分析轨迹数据。本文提出了一种并行的RDD-Gathering算法来发现海量轨迹数据中的收集模式。在此基础上,进一步设计了交通事件分析与预测的系统框架,实现了对交通异常事件的预测。最后,在一个真实的轨迹数据集上进行了大量实验,验证了所提算法的准确性和效率,实验结果表明,所提方法能够有效提高集束检索的效率。
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