Outlier Detection over Massive-Scale Trajectory Streams

Yanwei Yu, Lei Cao, Elke A. Rundensteiner, Qin Wang
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引用次数: 28

Abstract

The detection of abnormal moving objects over high-volume trajectory streams is critical for real-time applications ranging from military surveillance to transportation management. Yet this outlier detection problem, especially along both the spatial and temporal dimensions, remains largely unexplored. In this work, we propose a rich taxonomy of novel classes of neighbor-based trajectory outlier definitions that model the anomalous behavior of moving objects for a large range of real-time applications. Our theoretical analysis and empirical study on two real-world datasets—the Beijing Taxi trajectory data and the Ground Moving Target Indicator data stream—and one generated Moving Objects dataset demonstrate the effectiveness of our taxonomy in effectively capturing different types of abnormal moving objects. Furthermore, we propose a general strategy for efficiently detecting these new outlier classes called the minimal examination (MEX) framework. The MEX framework features three core optimization principles, which leverage spatiotemporal as well as the predictability properties of the neighbor evidence to minimize the detection costs. Based on this foundation, we design algorithms that detect the outliers based on these classes of new outlier semantics that successfully leverage our optimization principles. Our comprehensive experimental study demonstrates that our proposed MEX strategy drives the detection costs 100-fold down into the practical realm for applications that analyze high-volume trajectory streams in near real time.
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大规模轨迹流的异常值检测
在高容量轨迹流中检测异常移动物体对于从军事监视到运输管理的实时应用至关重要。然而,这种异常值检测问题,特别是在空间和时间维度上,在很大程度上仍未被探索。在这项工作中,我们提出了一种丰富的新类别的基于邻居的轨迹离群值定义的分类,这些定义为大范围的实时应用模拟了运动物体的异常行为。我们对两个真实世界数据集(北京出租车轨迹数据和地面运动目标指示数据流)和一个生成的运动物体数据集进行了理论分析和实证研究,证明了我们的分类方法在有效捕获不同类型的异常运动物体方面的有效性。此外,我们提出了一种用于有效检测这些新的异常类的通用策略,称为最小检查(MEX)框架。MEX框架具有三个核心优化原则,它们利用相邻证据的时空和可预测性特性来最大限度地降低检测成本。在此基础上,我们设计了基于这些新离群语义的算法来检测离群值,这些算法成功地利用了我们的优化原则。我们的综合实验研究表明,我们提出的MEX策略将检测成本降低了100倍,适用于近实时分析大容量轨迹流的应用。
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