Outlier Detection over Massive-Scale Trajectory Streams

Author:

Yu Yanwei1,Cao Lei2,Rundensteiner Elke A.3,Wang Qin4

Affiliation:

1. Yantai University, Shandong, China

2. Massachusetts Institute of Technology, Cambridge, Massachusetts

3. Worcester Polytechnic Institute, Worcester, Massachusetts

4. University of Science and Technology Beijing, Beijing, China

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 <underline>m</underline>inimal <underline>ex</underline>amination (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.

Funder

National Natural Science Foundation of China

Key Research 8 Development Project of Shandong Province

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems

Reference27 articles.

1. The CQL continuous query language: semantic foundations and query execution

2. Efficient anomaly monitoring over moving object trajectory streams

3. Varun Chandola Arindam Banerjee and Vipin Kumar. 2009. Anomaly detection: A survey. Computer Surveys 41 3 Article 15. 10.1145/1541880.1541882 Varun Chandola Arindam Banerjee and Vipin Kumar. 2009. Anomaly detection: A survey. Computer Surveys 41 3 Article 15. 10.1145/1541880.1541882

4. JointSTARS and GMTI: past, present and future

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