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A Robust Foreground Segmentation Method by Temporal Averaging Multiple Video Frames

机译:基于时间平均多个视频帧的鲁棒前景分割方法

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Foreground segmentation in videos by background subtraction methods are widely used in video surveillance applications. Adaptive single or mixture Gaussian models have been adopted for modeling nonstationary temporal distributions of background pixels. However, a challenge for this approach is that it is hard to choose a threshold to separate foreground from background accurately because of the so-called camouflage problem. This paper proposes a simple and effective scheme to alleviate the problem. It is achieved by averaging the frames in video sequences temporally, which reduces the variances of background models. Thus the background model is squeezed to a very narrow region and the probability of camouflage is reduced dramatically, which helps to improve the sensitivity and reliability. Significant improvements are shown on real video data. Incorporating this algorithm into a statistical framework for background subtraction leads to an improved foreground segmentation performance compared to a standard method.
机译:通过背景减法在视频中进行前景分割在视频监控应用中得到了广泛的应用。自适应单或混合高斯模型已被采用来建模背景像素的非平稳时间分布。然而,这种方法的挑战在于,由于所谓的伪装问题,难以选择阈值来准确地将前景与背景分开。本文提出了一种简单有效的方案来缓解这一问题。通过在时间上对视频序列中的帧进行平均,可以减少背景模型的方差。因此,背景模型被压缩到一个非常狭窄的区域,并且伪装的可能性大大降低,这有助于提高灵敏度和可靠性。实际视频数据显示出显着的改进。与标准方法相比,将该算法合并到用于背景扣除的统计框架中可以改善前景分割性能。

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