背景建模的时空高斯混合模型

Y. Soh, Y. Hae, Intaek Kim
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引用次数: 12

摘要

背景减法被广泛应用于背景动态行为不明显的运动目标检测中。研究者们提出了许多背景模型。它们大多只分析了像素的时间行为,而忽略了邻域的空间关系,而邻域关系可能是背景有动态活动时更好地分离前景和背景的关键。为了弥补这一缺陷,一些研究者提出了基于块的时空分析方法。最近的两篇综述[1,2]表明,在可能的时间背景模型中,时间核密度估计(KDE)方法和时间高斯混合模型(GMM)的性能几乎相同。提出了KDE的时空版本。然而,对于GMM,在文献中并不容易看到对时空域的明确扩展。本文提出了一种将GMM从时间域扩展到时空域的方法。我们将该方法应用于已知的测试序列,发现所提出的方法优于时间GMM。
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Spatio-temporal Gaussian Mixture Model for Background Modeling
Background subtraction is widely employed in the detection of moving objects when background does not show much dynamic behavior. Many background models have been proposed by researchers. Most of them analyses only temporal behavior of pixels and ignores spatial relations of neighborhood that may be a key to better separation of foreground from background when background has dynamic activities. To remedy, some researchers proposed spatio-temporal approaches usually in the block-based framework. Two recent reviews[1, 2] showed that temporal kernel density estimation(KDE) method and temporal Gaussian mixture model(GMM) perform about equally best among possible temporal background models. Spatio-temporal version of KDE was proposed. However, for GMM, explicit extension to spatio-temporal domain is not easily seen in the literature. In this paper, we propose an extension of GMM from temporal domain to spatio-temporal domain. We applied the methods to well known test sequences and found that the proposed outperforms the temporal GMM.
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