Journal ArticleUnknown
Background Modeling Through Statistical Edge-Segment Distributions
Author Affiliations
Kyung Hee University, Independent University
Published InIEEE Transactions on Circuits and Systems for Video Technology
Year2013
Citations31
Abstract
Background modeling is challenging due to background dynamism. Most background modeling methods fail in the presence of intensity changes, because the model cannot handle sudden changes. A solution to this problem is to use intensity-robust features. Despite the changes of an edge's shape and position among frames, edges are less sensitive than a pixel's intensity to illumination changes. Furthermore, background models in the presence of moving objects produce ghosts in the detected output, because high quality models require ideal backgrounds. In this paper, we propose a robust statistical edge-segment-based method for background modeling of non-ideal sequences. The proposed method learns the structure of the scene using the edges' behaviors through the use of kernel-density distributions. Moreover, it uses segment features…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.