Sub-trajectory- and Trajectory-Neighbor-based Outlier Detection over Trajectory Streams (original) (raw)

Abstract

Precisely and efficiently anomaly detection over trajectory streams is critical for many real-time applications. However, due to the uncertainty and complexity of behaviors of objects over trajectory streams, this problem has not been well solved. In this paper, we propose a novel detection algorithm, called STN-Outlier, for real time applications, where a set of fine-grained behavioral features are extracted from the sub-trajectory instead of point and a novel distance function is designed to measure the behavior similarity between two trajectories. Additionally, an optimized framework(TSX) is introduced to reduce the CPU resources cost of STN-Outlier. The performance experiments demonstrate that STN-Outlier successfully captures more fine-grained behaviors than the state-of-the-art methods; besides, the TSX framework outperforms the baseline solutions in terms of the CPU time in all cases.

This work has been supported by the National Natural Science Foundation of China (No. 61472403 and 61702470) and the Beijing Natural Science Foundation (No. 4182062).

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Authors and Affiliations

  1. Institute of Computing Technology, Chinese Academy of Sciences, Beijing, China
    Zhihua Zhu, Di Yao, Jianhui Huang & Jingping Bi
  2. University of Chinese Academy of Sciences, Huairou, China
    Zhihua Zhu & Di Yao
  3. National Defence Key Laboratory of Blind Processing of Signals, Chengdu, China
    Hanqiang Li

Authors

  1. Zhihua Zhu
  2. Di Yao
  3. Jianhui Huang
  4. Hanqiang Li
  5. Jingping Bi

Corresponding author

Correspondence toJingping Bi .

Editor information

Editors and Affiliations

  1. Deakin University, Geelong, Victoria, Australia
    Dinh Phung
  2. National Chiao Tung University, Hsinchu City, Taiwan
    Vincent S. Tseng
  3. Monash University, Clayton, Victoria, Australia
    Geoffrey I. Webb
  4. Japan Advanced Institute of Science and Technology, Nomi, Ishikawa, Japan
    Bao Ho
  5. University of Melbourne, Melbourne, Victoria, Australia
    Mohadeseh Ganji
  6. University of Melbourne, Melbourne, Victoria, Australia
    Lida Rashidi

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Zhu, Z., Yao, D., Huang, J., Li, H., Bi, J. (2018). Sub-trajectory- and Trajectory-Neighbor-based Outlier Detection over Trajectory Streams. In: Phung, D., Tseng, V., Webb, G., Ho, B., Ganji, M., Rashidi, L. (eds) Advances in Knowledge Discovery and Data Mining. PAKDD 2018. Lecture Notes in Computer Science(), vol 10937. Springer, Cham. https://doi.org/10.1007/978-3-319-93034-3\_44

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