Conference Proceedings

Online anomalous trajectory detection with deep generative sequence modeling

Y Liu, K Zhao, G Cong, Z Bao

Proceedings International Conference on Data Engineering | Published : 2020

Abstract

Detecting anomalous trajectory has become an important and fundamental concern in many real-world applications. However, most of the existing studies 1) cannot handle the complexity and variety of trajectory data and 2) do not support efficient anomaly detection in an online manner. To this end, we propose a novel model, namely Gaussian Mixture Variational Sequence AutoEncoder (GM-VSAE), to tackle these challenges. Our GM-VSAE model is able to (1) capture complex sequential information enclosed in trajectories, (2) discover different types of normal routes from trajectories and represent them in a continuous latent space, and (3) support efficient online detection via trajectory generation. ..

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University of Melbourne Researchers

Grants

Awarded by Appalachian Regional Commission


Funding Acknowledgements

This research is supported by a MOE Tier-2 grant MOE2016-T2-1-137, and a MOE Tier-1 grant RG31/17. Zhifeng Bao was partially supported by ARC DP170102726, DP180102050, and NSFC 61728204, 91646204. We thank the anonymous reviewers for providing useful comments.