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Published Articles >> Table of Contents >> Abstract
Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1
pp. 678-685
Learning a Sparse, Corner-Based Representation for Time-varying Background Modeling
Qiang Zhu, University of California at Santa Barbara
Shai Avidan, Mitsubishi Electric Research Laboratories
Kwang-Ting Cheng, University of California at Santa Barbara
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DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICCV.2005.134
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| Abstract |
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Time-varying phenomenon, such as ripples on water,
trees waving in the wind and illumination changes, produces
false motions, which significantly compromises the
performance of an outdoor-surveillance system. In this
paper, we propose a corner-based background model to
effectively detect moving-objects in challenging dynamic
scenes. Specifically, the method follows a three-step process.
First, we detect feature points using a Harris corner
detector and represent them as SIFT-like descriptors. Second,
we dynamically learn a background model and classify
each extracted feature as either a background or a foreground
feature. Last, a "Lucas-Kanade" feature tracker
is integrated into this framework to differentiate motion-consistent
foreground objects from background objects with
random or repetitive motion. The key insight of our work
is that a collection of SIFT-like features can effectively represent
the environment and account for variations caused
by natural effects with dynamic movements. Features that
do not correspond to the background must therefore correspond
to foreground moving objects. Our method is computational
efficient and works in real-time. Experiments
on challenging video clips demonstrate that the proposed
method achieves a higher accuracy in detecting the foreground
objects than the existing methods.
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Additional Information
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Citation:
Qiang Zhu, Shai Avidan, Kwang-Ting Cheng,
"Learning a Sparse, Corner-Based Representation for Time-varying Background Modeling,"
iccv,
pp. 678-685,
Tenth IEEE International Conference on Computer Vision (ICCV'05) Volume 1,
2005
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