DocumentCode :
1766609
Title :
Adaptive Sparse Representations for Video Anomaly Detection
Author :
Xuan Mo ; Monga, Vishal ; Bala, Raja ; Zhigang Fan
Author_Institution :
Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA, USA
Volume :
24
Issue :
4
fYear :
2014
fDate :
41730
Firstpage :
631
Lastpage :
645
Abstract :
Video anomaly detection can be used in the transportation domain to identify unusual patterns such as traffic violations, accidents, unsafe driver behavior, street crime, and other suspicious activities. A common class of approaches relies on object tracking and trajectory analysis. Very recently, sparse reconstruction techniques have been employed in video anomaly detection. The fundamental underlying assumption of these methods is that any new feature representation of a normal/anomalous event can be approximately modeled as a (sparse) linear combination prelabeled feature representations (of previously observed events) in a training dictionary. Sparsity can be a powerful prior on model coefficients but challenges remain in the detection of anomalies involving multiple objects and the ability of the linear sparsity model to effectively allow for class separation. The proposed research addresses both these issues. First, we develop a new joint sparsity model for anomaly detection that enables the detection of joint anomalies involving multiple objects. This extension is highly nontrivial since it leads to a new simultaneous sparsity problem that we solve using a greedy pursuit technique. Second, we introduce nonlinearity into, that is, kernelize. The linear sparsity model to enable superior class separability and hence anomaly detection. We extensively test on several real world video datasets involving both single and multiple object anomalies. Results show marked improvements in detection of anomalies in both supervised and unsupervised scenarios when using the proposed sparsity models.
Keywords :
greedy algorithms; image reconstruction; image representation; object detection; object tracking; traffic engineering computing; video signal processing; adaptive sparse representation techniques; greedy pursuit technique; joint sparsity model; kernel function; linear combination prelabeled feature representations; linear sparsity model; model coefficients; object tracking; object trajectory analysis; real world video datasets; sparse reconstruction techniques; training dictionary; video anomaly detection; Dictionaries; Hidden Markov models; Joints; Sparse matrices; Training; Trajectory; Vectors; Anomaly detection; anomaly detection; joint sparsity model; kernel function; outlier rejection;
fLanguage :
English
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
1051-8215
Type :
jour
DOI :
10.1109/TCSVT.2013.2280061
Filename :
6587741
Link To Document :
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