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Spatio-temporal nonparametric background modeling and subtraction

机译:时空非参数背景建模与减法

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Background modeling and subtraction is a core component of many vision based systems. By far the most popular background models are per-pixel models, in which each pixel is considered independently. Such models fail to handle dynamic backgrounds and noise. In this paper, we present a solution to this problem by proposing a novel and computationally simple spatio-temporal background model. We extend the nonparametric background model, one of the most widely used per-pixel models, from temporal domain to spatio-temporal domain. Instead of individual pixels, we consider 3 × 3 blocks centered on each pixel and use kernel density estimation (KDE) method in the 9-dimensional space. In order to reduce the computational complexity we use a hyperspherical kernel instead of Gaussian. We also make a small modification to the short term model used in order to handle sudden illumination changes. Experimental results show the effectiveness of the proposed model.
机译:背景建模和减法是许多基于视觉的系统的核心组件。到目前为止,最流行的背景模型是每像素模型,其中每个像素被独立考虑。这样的模型无法处理动态背景和噪声。在本文中,我们通过提出一种新颖且计算简单的时空背景模型来提出该问题的解决方案。我们将非参数背景模型(从时域扩展到时空域),该模型是使用最广泛的每像素模型之一。而不是单个像素,我们考虑在每个像素上居中的3×3个块,并在9维空间中使用核密度估计(KDE)方法。为了降低计算复杂度,我们使用超球核而不是高斯核。我们还对所使用的短期模型进行了少量修改,以处理突然的照明变化。实验结果表明了该模型的有效性。

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