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Spatiotemporal Background Subtraction Using Minimum Spanning Tree and Optical Flow

机译:使用最小生成树和光流量的时空背景减法

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Background modeling and subtraction is a fundamental research topic in computer vision. Pixel-level background model uses a Gaussian mixture model (GMM) or kernel density estimation to represent the distribution of each pixel value. Each pixel will be process independently and thus is very efficient. However, it is not robust to noise due to sudden illumination changes. Region-based background model uses local texture information around a pixel to suppress the noise but is vulnerable to periodic changes of pixel values and is relatively slow. A straightforward combination of the two cannot maintain the advantages of the two. This paper proposes a real-time integration based on robust estimator. Recent efficient minimum spanning tree based aggregation technique is used to enable robust estimators like M-smoother to run in real time and effectively suppress the noisy background estimates obtained from Gaussian mixture models. The refined background estimates are then used to update the Gaussian mixture models at each pixel location. Additionally, optical flow estimation can be used to track the foreground pixels and integrated with a temporal M-smoother to ensure temporally-consistent background subtraction. The experimental results are evaluated on both synthetic and real-world benchmarks, showing that our algorithm is the top performer.
机译:背景技术建模和减法是计算机愿景的基本研究课题。像素级背景模型使用高斯混合模型(GMM)或内核密度估计来表示每个像素值的分布。每个像素将独立处理,因此非常有效。然而,由于突然的照明变化,它对噪声并不稳健。基于地区的背景模型使用像素周围的局部纹理信息来抑制噪声,但是易受像素值的周期性变化,并且相对较慢。两者的直截了当的组合不能保持两者的优点。本文提出了基于强大估算器的实时集成。最近有效的最小生成树基于生成树的聚合技术用于实现像M-Smoother这样的强大估计器以实时运行,并有效地抑制从高斯混合模型获得的嘈杂的背景估计。然后,精炼背景估计用于更新每个像素位置的高斯混合模型。另外,光学流程估计可用于跟踪前景像素并与时间M-更漂亮的相集成,以确保时间一致的背景减法。实验结果在综合性和现实世界基准中评估,表明我们的算法是顶级表演者。

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