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Study on background modeling method based on robust principal component analysis

机译:基于鲁棒主成分分析的背景建模方法研究

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Background modeling is one of the key techniques in video surveillance system. When the training images contain more moving objects or its number is not sufficient, the existing methods normally end up with incorrect background estimates. In this paper, we study a type of method on data analysis, i.e., Robust Principle Component Analysis (RPCA), and present its application on the background modeling. Unlike previous approaches based on statistics, the new method uses an advanced convex optimization technique that is theoretically guaranteed to be robust to large errors. Experimental results demonstrate that the proposed solution can robustly estimate the background from relatively few training images, even in the case of sudden change of lighting.
机译:背景建模是视频监控系统中的关键技术之一。当训练图像包含更多的运动对象或其数量不足时,现有方法通常会以错误的背景估计而告终。在本文中,我们研究了一种用于数据分析的方法,即稳健主成分分析(RPCA),并介绍了其在背景建模中的应用。与以前的基于统计的方法不同,该新方法使用了先进的凸优化技术,该技术从理论上保证了对大错误的鲁棒性。实验结果表明,即使在照明突然变化的情况下,所提出的解决方案也可以从相对较少的训练图像中稳健地估计背景。

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