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@TECHREPORT{chanHSSBD06tr,
  author = {Chan, M. and Hoogs, A. and Sun, Z. and Schmiederer, J. and Bhotika,
	R. and Doretto, G.},
  title = {Event recognition with fragmented object tracks},
  institution = {GE Global research},
  year = {2006},
  number = {2006GRC038},
  address = {Niskayuna, NY, USA},
  month = jan,
  note = {Visualization and Computer Vision Laboratory},
  bib2html_pubtype = {Tech Reports},
  bib2html_rescat = {Video Surveillance, Event Recognition},
  abstract = {Complete and accurate video tracking is very difficult to achieve
	in practice due to occlusions, traffic, shadows and appearance changes.
	In this paper, we study the feasibility of event recognition when
	object tracks are fragmented at various levels. By changing the lock
	score threshold controlling track termination, different levels of
	track fragmentation are generated. In addition, the data contains
	lengthy occlusions of objects involved in the events. The effect
	on event recognition is revealed by examining the event model match
	score as a function of lock score threshold. Using a Dynamic Bayes
	network to model events, it is shown that event recognition improves
	with greater track fragmentation, assuming fragmented tracks for
	the same object are linked together. This is counter-intuitive, as
	it implies that event recognition works better as tracking degrades.
	The experiments also show that the model is capable of handling long
	tracking gaps. The study is conducted on busy scenes of airplane
	servicing activities, with occlusions lasting hundreds of frames,
	object appearance changes and significant clutter traffic.},
  file = {chanHSSBD06tr.pdf:doretto\\report\\chanHSSBD06tr.pdf:PDF},
  keywords = {video surveillance, event recognition, semantics, dynamic bayesian
	network, video analysis},
  owner = {doretto},
  pdf = {doretto\report\chanHSSBD06tr.pdf},
  timestamp = {2006.11.29}
}
