標題: Regularized Background Adaptation: A Novel Learning Rate Control Scheme for Gaussian Mixture Modeling
作者: Lin, Horng-Horng
Chuang, Jen-Hui
Liu, Tyng-Luh
資訊工程學系
Department of Computer Science
關鍵字: Background subtraction;Gaussian mixture modeling;learning rate control;surveillance
公開日期: 1-Mar-2011
摘要: To model a scene for background subtraction, Gaussian mixture modeling (GMM) is a popular choice for its capability of adaptation to background variations. However, GMM often suffers from a tradeoff between robustness to background changes and sensitivity to foreground abnormalities and is inefficient in managing the tradeoff for various surveillance scenarios. By reviewing the formulations of GMM, we identify that such a tradeoff can be easily controlled by adaptive adjustments of the GMM's learning rates for image pixels at different locations and of distinct properties. A new rate control scheme based on high-level feedback is then developed to provide better regularization of background adaptation for GMM and to help resolving the tradeoff. Additionally, to handle lighting variations that change too fast to be caught by GMM, a heuristic rooting in frame difference is proposed to assist the proposed rate control scheme for reducing false foreground alarms. Experiments show the proposed learning rate control scheme, together with the heuristic for adaptation of over-quick lighting change, gives better performance than conventional GMM approaches.
URI: http://dx.doi.org/10.1109/TIP.2010.2075938
http://hdl.handle.net/11536/9262
ISSN: 1057-7149
DOI: 10.1109/TIP.2010.2075938
期刊: IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume: 20
Issue: 3
起始頁: 822
結束頁: 836
Appears in Collections:Articles


Files in This Item:

  1. 000287400700018.pdf

If it is a zip file, please download the file and unzip it, then open index.html in a browser to view the full text content.