Flexible background mixture models for foreground segmentation

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摘要

Robust and real-time foreground segmentation is a crucial topic in many computer vision applications. Background subtraction is a typical approach to segment foreground by comparing each new frame with a learned model of the scene background in image sequences taken from a static camera. In this paper, we propose a flexible method to estimate the background model with the finite Gaussian mixture model. A stochastic approximation procedure is used to recursively estimate the parameters of the Gaussian mixture model, and to simultaneously obtain the asymptotically optimal number of the mixture components. Our method is highly memory and time efficient. Moreover, it can effectively deal with the many scenes, such as the indoor scene, the outdoor scene, and the clutter scene. The experimental results show our method is efficient and effective.

论文关键词:Foreground segmentation,Background subtraction,Mixture models,EM algorithm,Maximum a posteriori (MAP)

论文评审过程:Received 24 November 2004, Revised 26 December 2005, Accepted 31 January 2006, Available online 23 March 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2006.01.018