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Evaluation of an Adaptive Composite Gaussian Model in Video Surveillance

机译:视频监控中自适应复合高斯模型的评估

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Video surveillance systems seek to automatically identify events of interest in a variety of situations. Extracting a moving object from a background is the most important step of the whole system. There are many approaches to track moving objects in a video surveillance system. These can be classified into three main groups: feature-based tracking, background subtraction, and optical flow techniques. Background subtraction is a region-based approach where the objective is to identify parts of the image plane that are significantly different to the background. In order to avoid the most common problems introduced by gradual illumination changes, waving trees, shadows, etc., the background scene requires a composite model. A mixture of Gaussian distributions is most popular. In this paper, we classify and discuss several recently proposed composite models. We have chosen one of these for implementation and evaluate its performance. We also analyzed its benefits and drawbacks, and designed an improved version of this model based on our experimental evaluation. One stationary camera has been used.
机译:视频监视系统试图在各种情况下自动识别感兴趣的事件。从背景提取运动对象是整个系统最重要的步骤。在视频监视系统中,有许多跟踪运动对象的方法。这些可以分为三大类:基于特征的跟踪,背景扣除和光流技术。背景扣除是一种基于区域的方法,其目的是识别图像平面中与背景明显不同的部分。为了避免由逐渐的光照变化,树木摇曳,阴影等引起的最常见问题,背景场景需要使用复合模型。高斯分布的混合是最流行的。在本文中,我们对最近提出的几种复合模型进行分类和讨论。我们选择了其中一种进行实施并评估其性能。我们还分析了它的优缺点,并根据我们的实验评估设计了该模型的改进版本。使用了一台固定式摄像机。

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