This paper appears in: Selected Topics in Signal Processing, IEEE Journal of
Publication Date: Aug. 2008
Volume: 2,
Issue: 4
On page(s): 568-581
ISSN: 1932-4553
INSPEC Accession Number: 10235481
Digital Object Identifier: 10.1109/JSTSP.2008.2001306
Current Version Published: 2008-09-23
Abstract
We discuss the problem of detecting dominant motions in dense crowds, a challenging and societally important problem. First, we survey the general literature of computer vision algorithms that deal with crowds of people, including model- and feature-based approaches to segmentation and tracking as well as algorithms that analyze general motion trends. Second, we present a system for automatically identifying dominant motions in a crowded scene. Accurately tracking individual objects in such scenes is difficult due to inter- and intra-object occlusions that cannot be easily resolved. Our approach begins by independently tracking low-level features using optical flow. While many of the feature point tracks are unreliable, we show that they can be clustered into smooth dominant motions using a distance measure for feature trajectories based on longest common subsequences. Results on real video sequences demonstrate that the approach can successfully identify both dominant and anomalous motions in crowded scenes. These fully-automatic algorithms could be easily incorporated into distributed camera networks for autonomous scene analysis.
Index
Terms
Available to subscribers and IEEE members.
References
Available to subscribers and IEEE members.
Citing Documents
Available to subscribers and IEEE members.