DocumentCode :
949587
Title :
Video Behavior Profiling for Anomaly Detection
Author :
Xiang, Tao ; Gong, Shaogang
Author_Institution :
Univ. of London, London
Volume :
30
Issue :
5
fYear :
2008
fDate :
5/1/2008 12:00:00 AM
Firstpage :
893
Lastpage :
908
Abstract :
This paper aims to address the problem of modeling video behavior captured in surveillance videos for the applications of online normal behavior recognition and anomaly detection. A novel framework is developed for automatic behavior profiling and online anomaly sampling/detection without any manual labeling of the training data set. The framework consists of the following key components: 1) A compact and effective behavior representation method is developed based on discrete-scene event detection. The similarity between behavior patterns are measured based on modeling each pattern using a Dynamic Bayesian Network (DBN). 2) The natural grouping of behavior patterns is discovered through a novel spectral clustering algorithm with unsupervised model selection and feature selection on the eigenvectors of a normalized affinity matrix. 3) A composite generative behavior model is constructed that is capable of generalizing from a small training set to accommodate variations in unseen normal behavior patterns. 4) A runtime accumulative anomaly measure is introduced to detect abnormal behavior, whereas normal behavior patterns are recognized when sufficient visual evidence has become available based on an online Likelihood Ratio Test (LRT) method. This ensures robust and reliable anomaly detection and normal behavior recognition at the shortest possible time. The effectiveness and robustness of our approach is demonstrated through experiments using noisy and sparse data sets collected from both indoor and outdoor surveillance scenarios. In particular, it is shown that a behavior model trained using an unlabeled data set is superior to those trained using the same but labeled data set in detecting anomaly from an unseen video. The experiments also suggest that our online LRT-based behavior recognition approach is advantageous over the commonly used Maximum Likelihood (ML) method in differentiating ambiguities among different behavior classes observed online.
Keywords :
Bayes methods; eigenvalues and eigenfunctions; feature extraction; matrix algebra; pattern clustering; surveillance; video signal processing; anomaly detection; anomaly sampling; behavior pattern grouping; behavior recognition; behavior representation; composite generative behavior model; discrete-scene event detection; dynamic Bayesian network; eigenvectors; feature selection; likelihood ratio test; normalized affinity matrix; spectral clustering algorithm; surveillance videos; unsupervised model selection; video behavior profiling; visual evidence; Anomaly Detection; Behaviour profiling; Dynamic Bayesian Networks.; Dynamic Scene Modelling; FeatureSelection; Spectral clustering; Algorithms; Artificial Intelligence; Image Enhancement; Image Interpretation, Computer-Assisted; Information Storage and Retrieval; Pattern Recognition, Automated; Video Recording;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2007.70731
Filename :
4359346
Link To Document :
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