(Enter summary)
Abstract: We describe a novel extension to the CONDENSATION algorithm for tracking
multiple objects of the same type. Previous extensions for multiple object
tracking do not scale effectively to large numbers of objects. The new approach
-- subordinated CONDENSATION -- deals effectively with arbitrary
numbers of objects in an efficient manner, providing a robust means of tracking
individual objects across heavily populated and cluttered scenes. The key
innovation is the introduction of bindings... (Update)
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BibTeX entry: (Update)
D. Tweed and A. Calway. Tracking many objects using subordinated condensation. In British Machine Vision Conference, pages 283--292, 2002. 8 http://citeseer.ist.psu.edu/tweed02tracking.html More
@misc{ tweed02tracking,
author = "D. Tweed and A. Calway",
title = "Tracking many objects using subordinated condensation",
text = "D. Tweed and A. Calway. Tracking many objects using subordinated condensation.
In British Machine Vision Conference, pages 283--292, 2002. 8",
year = "2002",
url = "citeseer.ist.psu.edu/tweed02tracking.html" }
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