DocumentCode
943182
Title
Statistical Background Subtraction Using Spatial Cues
Author
Jodoin, Pierre-Marc ; Mignotte, Max ; Konrad, Janusz
Author_Institution
Departement d´´lnforma-tique, Sherbrooke
Volume
17
Issue
12
fYear
2007
Firstpage
1758
Lastpage
1763
Abstract
Most statistical background subtraction techniques are based on the analysis of temporal color/intensity distribution. However, learning statistics on a series of time frames can be problematic, especially when no frame absent of moving objects is available or when the available memory is not sufficient to store the series of frames needed for learning. In this letter, we propose a spatial variation to the traditional temporal framework. The proposed framework allows statistical motion detection with methods trained on one background frame instead of a series of frames as is usually the case. Our framework includes two spatial background subtraction approaches suitable for different applications. The first approach is meant for scenes having a nonstatic background due to noise, camera jitter or animation in the scene (e.g.,waving trees, fluttering leaves). This approach models each pixel with two PDFs: one unimodal PDF and one multimodal PDF, both trained on one background frame. In this way, the method can handle backgrounds with static and nonstatic areas. The second spatial approach is designed to use as little processing time and memory as possible. Based on the assumption that neighboring pixels often share similar temporal distribution, this second approach models the background with one global mixture of Gaussians.
Keywords
motion estimation; probability; statistical analysis; multimodal PDF; multimodal probability density function; nonstatic background; spatial cues; spatial variation; statistical background subtraction; statistical motion detection; unimodal PDF; unimodal probability density function; Background detection; motion detection; none given;
fLanguage
English
Journal_Title
Circuits and Systems for Video Technology, IEEE Transactions on
Publisher
ieee
ISSN
1051-8215
Type
jour
DOI
10.1109/TCSVT.2007.906935
Filename
4358678
Link To Document