Journal article
Head detection using motion features and multi level pyramid architecture
FC Hsu, J Gubbi, M Palaniswami
Computer Vision and Image Understanding | Published : 2015
Abstract
Abstract Monitoring large crowds using video cameras is a challenging task. Detecting humans in video is becoming essential for monitoring crowd behavior. However, occlusion and low resolution in the region of interest hinders accurate crowd segmentation. In such scenarios, it is likely that only the head is visible, and often very small. Most existing people-detection systems rely on low-level visual appearance features such as the Histogram of Oriented Gradients (HOG), and these are unsuitable for detecting human heads at low resolutions. In this paper, a novel head detector is presented using motion histogram features. The shape and the motion information, including crowd direction and ma..
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Grants
Awarded by Australian Research Council
Funding Acknowledgements
This work is partially supported by the ARC linkage project LP100200430, partnering the University of Melbourne, Melbourne Cricket Club and ARUP. Authors would like to thank representatives and staff of ARUP and MCG. We also thank Mr. Aravinda S. Rao for his valuable feedback.