首页> 外文会议>Pacific Rim Conference on Multimedia; 20071211-14; Hong Kong(CN) >Efficient Adaptive Background Subtraction Based on Multi-resolution Background Modelling and Updating
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Efficient Adaptive Background Subtraction Based on Multi-resolution Background Modelling and Updating

机译:基于多分辨率背景建模和更新的高效自适应背景减法

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Adaptive background subtraction (ABS) is a fundamental step for foreground object detection in many real-time video surveillance systems. In many ABS methods, a pixel-based statistical model is used for the background and each pixel is updated online to adapt to various background changes. As a result, heavy computation and memory consumption are required. In this paper, we propose an efficient methodology for implementation of ABS algorithms based on multi-resolution background modelling and sequential sampling for updating background. Experiments and quantitative evaluation are conducted on two open data sets (PETS2001 and PETS2006) and scenarios captured in some public places, and some results are included. Our results have shown that the proposed method requires a significant reduction in memory and CPU usage, meanwhile maintaining a similar foreground segmentation performance as compared with the corresponding single resolution methods.
机译:在许多实时视频监控系统中,自适应背景减法(ABS)是检测前景物体的基本步骤。在许多ABS方法中,基于像素的统计模型用于背景,并且每个像素都在线更新以适应各种背景变化。结果,需要大量的计算和存储器消耗。在本文中,我们提出了一种基于多分辨率背景建模和顺序采样更新背景的ABS算法的有效实现方法。对两个开放数据集(PETS2001和PETS2006)进行了实验和定量评估,并在一些公共场所捕获了场景,并包括了一些结果。我们的结果表明,与相应的单分辨率方法相比,该方法需要显着减少内存和CPU使用率,同时保持相似的前景分割性能。

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