Title of article :
Statistical Modeling of Complex Backgrounds for Foreground Object Detection
Author/Authors :
L. Li، نويسنده , , W. Huang، نويسنده , , I. Y.-H. Gu، نويسنده , , H. Q. Tian، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
This paper addresses the problem of background
modeling for foreground object detection in complex environments.
A Bayesian framework that incorporates spectral, spatial,
and temporal features to characterize the background appearance
is proposed. Under this framework, the background is represented
by the most significant and frequent features, i.e., the principal
features, at each pixel. A Bayes decision rule is derived for background
and foreground classification based on the statistics of
principal features. Principal feature representation for both the
static and dynamic background pixels is investigated. A novel
learning method is proposed to adapt to both gradual and sudden
“once-off” background changes. The convergence of the learning
process is analyzed and a formula to select a proper learning rate
is derived. Under the proposed framework, a novel algorithm for
detecting foreground objects from complex environments is then
established. It consists of change detection, change classification,
foreground segmentation, and background maintenance. Experiments
were conducted on image sequences containing targets of
interest in a variety of environments, e.g., offices, public buildings,
subway stations, campuses, parking lots, airports, and sidewalks.
Good results of foreground detection were obtained. Quantitative
evaluation and comparison with the existing method show that the
proposed method provides much improved results.
Keywords :
Object detection , principal features , video surveillance. , Background maintenance , background modeling , background subtraction , Bayes decision theory , complexbackground , Feature extraction , Motion analysis
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING