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Dynamic Deep Pixel Distribution Learning for Background Subtraction

机译:背景减法的动态深映像分布学习

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摘要

Previous approaches to background subtraction usually approximate the distribution of pixels with artificial models. In this paper, we focus on automatically learning the distribution, using a novel background subtraction model named Dynamic Deep Pixel Distribution Learning (D-DPDL). In our D-DPDL model, a distribution descriptor named Random Permutation of Temporal Pixels (RPoTP) is dynamically generated as the input to a convolutional neural network for learning the statistical distribution, and a Bayesian refinement model is tailored to handle the random noise introduced by the random permutation. Because the temporal pixels are randomly permutated to guarantee that only statistical information is retained in RPoTP features, the network is forced to learn the pixel distribution. Moreover, since the noise is random, the Bayesian theorem is naturally selected to propose an empirical model as a compensation based on the similarity between pixels. Evaluations using standard benchmark demonstrates the superiority of the proposed approach compared with the state-of-the-art, including traditional methods as well as deep learning methods.
机译:以前的背景减法的方法通常近似于具有人工模型的像素的分布。在本文中,我们专注于使用名为动态深度像素分布学习(D-DPDL)的新颖背景减法模型自动学习分布。在我们的D-DPDL模型中,动态地生成将时间像素(RPOTP)的随机排列的分布描述符作为用于学习统计分布的卷积神经网络的输入,并且越来越多地定制贝叶斯改进模型以处理所引入的随机噪声随机排列。因为随机置换时间像素以保证仅在RPOTP特征中保留统计信息,所以网络被迫学习像素分布。此外,由于噪声是随机的,因此自然地选择贝叶斯定理以基于像素之间的相似性提出经验模型作为补偿。使用标准基准测试的评估展示了与最先进的方法(包括传统方法)以及深度学习方法相比的方法的优越性。

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