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MRF-Based Background Initialisation for Improved Foreground Detection in Cluttered Surveillance Videos

机译:基于MRF的背景初始化,可改善混乱监视视频中的前景检测

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Robust foreground object segmentation via background modelling is a difficult problem in cluttered environments, where obtaining a clear view of the background to model is almost impossible. In this paper, we propose a method capable of robustly estimating the background and detecting regions of interest in such environments. In particular, we propose to extend the background initialisation component of a recent patch-based foreground detection algorithm with an elaborate technique based on Markov Random Fields, where the optimal labelling solution is computed using iterated conditional modes. Rather than relying purely on local temporal statistics, the proposed technique takes into account the spatial continuity of the entire background. Experiments with several tracking algorithms on the CAVIAR dataset indicate that the proposed method leads to considerable improvements in object tracking accuracy, when compared to methods based on Gaussian mixture models and feature histograms.
机译:在混乱的环境中,通过背景建模进行鲁棒的前景对象分割是一个困难的问题,在该环境中几乎不可能获得要建模的背景的清晰视图。在本文中,我们提出了一种能够在此类环境中稳健估计背景并检测感兴趣区域的方法。特别是,我们建议使用基于马尔可夫随机场的精细​​技术扩展最近的基于补丁的前景检测算法的背景初始化组件,其中使用迭代条件模式计算最佳标记解决方案。所提出的技术不是单纯地依赖于本地时间统计,而是考虑了整个背景的空间连续性。在CAVIAR数据集上使用几种跟踪算法进行的实验表明,与基于高斯混合模型和特征直方图的方法相比,该方法可大大提高对象的跟踪精度。

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