DocumentCode :
77296
Title :
Detection of Dynamic Background Due to Swaying Movements From Motion Features
Author :
Duc-Son Pham ; Arandjelovic, Ognjen ; Venkatesh, Svetha
Author_Institution :
Dept. of Comput., Curtin Univ., Perth, WA, Australia
Volume :
24
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
332
Lastpage :
344
Abstract :
Dynamically changing background (dynamic background) still presents a great challenge to many motion-based video surveillance systems. In the context of event detection, it is a major source of false alarms. There is a strong need from the security industry either to detect and suppress these false alarms, or dampen the effects of background changes, so as to increase the sensitivity to meaningful events of interest. In this paper, we restrict our focus to one of the most common causes of dynamic background changes: (1) that of swaying tree branches and (2) their shadows under windy conditions. Considering the ultimate goal in a video analytics pipeline, we formulate a new dynamic background detection problem as a signal processing alternative to the previously described but unreliable computer vision-based approaches. Within this new framework, we directly reduce the number of false alarms by testing if the detected events are due to characteristic background motions. In addition, we introduce a new data set suitable for the evaluation of dynamic background detection. It consists of real-world events detected by a commercial surveillance system from two static surveillance cameras. The research question we address is whether dynamic background can be detected reliably and efficiently using simple motion features and in the presence of similar but meaningful events, such as loitering. Inspired by the tree aerodynamics theory, we propose a novel method named local variation persistence (LVP), that captures the key characteristics of swaying motions. The method is posed as a convex optimization problem, whose variable is the local variation. We derive a computationally efficient algorithm for solving the optimization problem, the solution of which is then used to form a powerful detection statistic. On our newly collected data set, we demonstrate that the proposed LVP achieves excellent detection results and outperforms the best alternative adapted from existing art - n the dynamic background literature.
Keywords :
computer vision; convex programming; feature extraction; image motion analysis; video cameras; video surveillance; LVP; computationally efficient algorithm; computer vision-based approach; convex optimization problem; dynamic background detection; event detection; false alarm detection; false alarm suppression; local variation persistence; motion feature; motion-based video surveillance system; security industry; signal processing; surveillance camera; tree aerodynamics theory; video analytics pipeline; Aerodynamics; Cameras; Feature extraction; Surveillance; Vectors; Vegetation; ADMM; Dynamic background; ROC; convex optimization; detection algorithms; dynamic background; mixture of Gaussians; motion-based analysis; shadow; sparsity learning;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2378034
Filename :
6975217
Link To Document :
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