Authors
David Nicholas Olivieri, Iván Gómez Conde, Xosé Antón Vila Sobrino
Publication date
2012/4/1
Journal
Expert Systems with Applications
Volume
39
Issue
5
Pages
5935-5945
Publisher
Pergamon
Description
Automatic recognition of anomalous human activities and falls in an indoor setting from video sequences could be an enabling technology for low-cost, home-based health care systems. Detection systems based upon intelligent computer vision software can greatly reduce the costs and inconveniences associated with sensor based systems. In this paper, we propose such a software based upon a spatio-temporal motion representation, called Motion Vector Flow Instance (MVFI) templates, that capture relevant velocity information by extracting the dense optical flow from video sequences of human actions. Automatic recognition is achieved by first projecting each human action video sequence, consisting of approximately 100 images, into a canonical eigenspace, and then performing supervised learning to train multiple actions from a large video database. We show that our representation together with a canonical …
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