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Published in: Machine Vision and Applications 6/2014

01-08-2014 | Original Paper

Two-stage online inference model for traffic pattern analysis and anomaly detection

Authors: Hawook Jeong, Youngjoon Yoo, Kwang Moo Yi, Jin Young Choi

Published in: Machine Vision and Applications | Issue 6/2014

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Abstract

In this paper, we propose a method for modeling trajectory patterns with both regional and velocity observations through the probabilistic topic model. By embedding Gaussian models into the discrete topic model framework, our method uses continuous velocity as well as regional observations unlike existing approaches. In addition, the proposed framework combined with Hidden Markov Model can cover the temporal transition of the scene state, which is useful in checking a violation of the rule that some conflict topics (e.g. two cross-traffic patterns) should not occur at the same time. To achieve online learning even with the complexity of the proposed model, we suggest a novel learning scheme instead of collapsed Gibbs sampling. The proposed two-stage greedy learning scheme is not only efficient at reducing the search space but also accurate in a way that the accuracy of online learning becomes not worse than that of the batch learning. To validate the performance of our method, experiments were conducted on various datasets. Experimental results show that our model explains satisfactorily the trajectory patterns with respect to scene understanding, anomaly detection, and prediction.

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Appendix
Available only for authorised users
Footnotes
1
To concisely represent notations, the set notation \(\{\cdot \}\) without the range of index is defined as a set of variables containing all possible indices. Also, the variables without indices imply that they deal with all possible indices, such as, \(c = \left\{ {{c_{tji}}} \right\} = \left\{ {{c_{tji}}} \right\} _{t = 1,j = 1,i = 1}^{T,M,{N_j}},p(s) = p\left( {\{ {s_t}\} _{t = 1}^T} \right) = \prod \nolimits _{t = 1}^T {p({s_t})}\).
 
2
Because the anomaly detection task should be performed for every frame, we compose \(t'\)th trajectory collections from the trajectories on the current frame.
 
3
The supplementary video provides detailed process of online learning sequences.
 
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Metadata
Title
Two-stage online inference model for traffic pattern analysis and anomaly detection
Authors
Hawook Jeong
Youngjoon Yoo
Kwang Moo Yi
Jin Young Choi
Publication date
01-08-2014
Publisher
Springer Berlin Heidelberg
Published in
Machine Vision and Applications / Issue 6/2014
Print ISSN: 0932-8092
Electronic ISSN: 1432-1769
DOI
https://doi.org/10.1007/s00138-014-0629-y

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