Title :
Background and foreground modeling using nonparametric kernel density estimation for visual surveillance
Author :
Elgammal, Ahmed ; Duraiswami, Ramani ; Harwood, David ; Davis, Larry S.
Author_Institution :
Comput. Vision Lab., Maryland Univ., College Park, MD, USA
fDate :
7/1/2002 12:00:00 AM
Abstract :
Automatic understanding of events happening at a site is the ultimate goal for many visual surveillance systems. Higher level understanding of events requires that certain lower level computer vision tasks be performed. These may include detection of unusual motion, tracking targets, labeling body parts, and understanding the interactions between people. To achieve many of these tasks, it is necessary to build representations of the appearance of objects in the scene. This paper focuses on two issues related to this problem. First, we construct a statistical representation of the scene background that supports sensitive detection of moving objects in the scene, but is robust to clutter arising out of natural scene variations. Second, we build statistical representations of the foreground regions (moving objects) that support their tracking and support occlusion reasoning. The probability density functions (pdfs) associated with the background and foreground are likely to vary from image to image and will not in general have a known parametric form. We accordingly utilize general nonparametric kernel density estimation techniques for building these statistical representations of the background and the foreground. These techniques estimate the pdf directly from the data without any assumptions about the underlying distributions. Example results from applications are presented.
Keywords :
computer vision; image representation; nonparametric statistics; parameter estimation; surveillance; automatic understanding; computer vision; kernel density estimation; nonparametric; occlusion modeling; probability density functions; scene background; statistical representation; visual surveillance; Computer vision; Kernel; Labeling; Layout; Motion detection; Object detection; Probability density function; Robustness; Surveillance; Target tracking;
Journal_Title :
Proceedings of the IEEE
DOI :
10.1109/JPROC.2002.801448