In this paper, we present a novel person detection system for public transport buses tackling the problem of changing illumination conditions. Our approach integrates a stable SIFT (Scale Invariant Feature Transform) background seat modeling mechanism with a human shape model into a weighted Bayesian framework to detect passengers on-board buses. SIFT background modeling extracts local stable features on the pre-annotated background seat areas and tracks these features over time to build a global statistical background model for each seat. Since SIFT features are partially invariant to lighting, this background model can be used robustly to detect the seat occupancy status even under severe lighting changes. The human shape model further confirms the existence of a passenger when a seat is occupied. This constructs a robust passenger monitoring system which is resilient to illumination changes. We evaluate the performance of our proposed system on a number of challenging video datasets obtained from bus cameras and the experimental results show that it is superior to state-of-art people detection systems.
History
Pagination
719 - 725
Location
Hanoi, Vietnam
Open access
Yes
Start date
2008-12-17
End date
2008-12-20
ISBN-13
9781424422869
ISBN-10
1424422868
Language
eng
Notes
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Publication classification
E1.1 Full written paper - refereed
Copyright notice
2008, IEEE
Title of proceedings
ICARCV 2008 : Proceedings of the 10th International Conference on Control, Automation, Robotics and Vision