Journal article
Crowd Event Detection on Optical Flow Manifolds
AS Rao, J Gubbi, S Marusic, M Palaniswami
IEEE Transactions on Cybernetics | Published : 2016
Abstract
Analyzing crowd events in a video is key to understanding the behavioral characteristics of people (humans). Detecting crowd events in videos is challenging because of articulated human movements and occlusions. The aim of this paper is to detect the events in a probabilistic framework for automatically interpreting the visual crowd behavior. In this paper, crowd event detection and classification in optical flow manifolds (OFMs) are addressed. A new algorithm to detect walking and running events has been proposed, which uses optical flow vector lengths in OFMs. Furthermore, a new algorithm to detect merging and splitting events has been proposed, which uses Riemannian connections in the opt..
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Grants
Awarded by Australian Research Council
Funding Acknowledgements
This work was supported in part by the Australian Research Council Linkage Project under Grant LP100200430, in part by the University of Melbourne, in part by the Melbourne Cricket Club, and in part by Arup. This paper was recommended by Associate Editor W. Hu.