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FROM GMM TO HGMM: AN APPROACH IN MOVING OBJECT DETECTION

机译:从GMM到HGMM:移动物体检测的一种方法

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Background subtraction methods are widely exploited for moving object detection in many applications. A key issue to these methods is how to model and maintain the background correctly and efficiently. This paper describes a foreground detector used in our surveillance system characterized by multiple Gaussian statistics. Compared with the existing methods, our Gaussian mixture model (GMM) differs in model initialization, matching, classification and updating. We propose a fast on-line initialization algorithm to train GMM parameters quickly and correctly. All components of the GMM are classified into three kinds: moving object model, still life model and background model, which is effective for complete detection within a certain period of time. GMMs at different scales an: organized in a hierarchical manner to handle sharp illumination changes as well as gradual ones. A convenient way to combine luminance distortion with chrominance distortion is presented for shadow detection in complex scenes. Extensive experimental results are provided to highlight the advantages of our detector.
机译:背景减法在许多应用中被广泛用于运动物体检测。这些方法的关键问题是如何正确有效地建模和维护背景。本文介绍了在我们的监视系统中使用的前景检测器,该检测器具有多个高斯统计量。与现有方法相比,我们的高斯混合模型(GMM)在模型初始化,匹配,分类和更新方面有所不同。我们提出了一种快速的在线初始化算法来快速正确地训练GMM参数。 GMM的所有组件分为三类:运动对象模型,静物模型和背景模型,可有效地在一定时间内完成检测。不同比例的GMM:以分层的方式组织,以应对剧烈的照明变化以及渐进的照明变化。提出了一种将亮度失真与色度失真结合的便捷方法,用于复杂场景中的阴影检测。提供了广泛的实验结果,以突出我们检测器的优势。

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