A fast algorithm for adaptive background model construction using parzen density estimation

T. Tanaka, Atsushi Shimada, Daisaku Arita, R. Taniguchi
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引用次数: 46

Abstract

Non-parametric representation of pixel intensity distribution is quite effective to construct proper background model and to detect foreground objects accurately. However, from the viewpoint of practical application, the computation cost of the distribution estimation should be reduced. In this paper, we present fast estimation of the probability density function (PDF) of pixel value using Parzen density estimation and foreground object detection based on the estimated PDF. Here, the PDF is computed by partially updating the PDF estimated at the previous frame, and it greatly reduces the computation cost of the PDF estimation. Thus, the background model adapts quickly to changes in the scene and, therefore, foreground objects can be robustly detected. Several experiments show the effectiveness of our approach.
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基于parzen密度估计的自适应背景模型快速构建算法
像素强度分布的非参数化表示对于构建合适的背景模型和准确检测前景目标是非常有效的。然而,从实际应用的角度来看,应该降低分布估计的计算成本。本文提出了一种基于Parzen密度估计的像素值概率密度函数(PDF)的快速估计方法,并基于估计的PDF进行前景目标检测。本文通过对前一帧估计的PDF进行部分更新来计算PDF,大大降低了PDF估计的计算成本。因此,背景模型可以快速适应场景的变化,从而可以鲁棒地检测前景物体。几个实验证明了我们方法的有效性。
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