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Published in: Machine Vision and Applications 6/2014

01-08-2014 | Original Paper

Multilayer background modeling under occlusions

Authors: Shoaib Azmat, Linda Wills, Scott Wills

Published in: Machine Vision and Applications | Issue 6/2014

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Abstract

A multilayer background modeling technique is presented for video surveillance. Rather than simply classifying all features in a scene as either dynamically moving foreground or long-lasting, stationary background, a temporal model is used to place each scene object in time relative to each other. Foreground objects that become stationary are registered as layers on top of the background layer. In this process of layer formation, the algorithm deals with ”fake objects” created by moved background, and noise created by dynamic background and moving foreground objects. Objects that leave the scene are removed based on the occlusion reasoning among layers. The technique allows us to understand and visualize a scene with multiple objects entering, leaving, and occluding each other at different points in time. This scene understanding leads to a richer representation of temporal scene events than traditional foreground/background segmentation. The technique builds on a low-cost background modeling technique that makes it suitable for embedded, real-time platforms.

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Metadata
Title
Multilayer background modeling under occlusions
Authors
Shoaib Azmat
Linda Wills
Scott Wills
Publication date
01-08-2014
Publisher
Springer Berlin Heidelberg
Published in
Machine Vision and Applications / Issue 6/2014
Print ISSN: 0932-8092
Electronic ISSN: 1432-1769
DOI
https://doi.org/10.1007/s00138-014-0614-5

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