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Background-foreground interaction for moving object detection in dynamic scenes

机译:动态场景中移动物体检测的背景前景交互

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Both background subtraction and foreground extraction are the typical methods used to detect moving objects in video sequences. In order to flexibly represent the long-term state and the short-term changes in a scene, a new weighted Kernel Density Estimation (KDE) is proposed to build the long-term background (LTB) and short-term foreground (STF) models, respectively. A novel mechanism is proposed to support the interaction between the LTB and STF models. The interaction includes the weight transmission and the fusion between the LTB and STF models. In the weight transmission process between the LTB and STF models, the sample weight of one model (either the background model or the foreground model) in the current time step is updated under the guidance of the decision of the other model in the previous time step. In the background-foreground fusion stage, a unified Bayesian framework is proposed to detect objects and the detection result in any time step is given by the logarithm of the posterior ratio between the background and foreground models. This interactive approach proposed in this paper improves the robustness of moving object detection, preventing deadlocks and degeneration in the models. The experimental results demonstrate that our proposed approach outperforms previous ones. (C) 2018 Published by Elsevier Inc.
机译:背景减法和前景提取都是用于检测视频序列中的移动物体的典型方法。为了灵活地表示场景中的长期状态和短期变化,提出了一种新的加权核密度估计(KDE)来构建长期背景(LTB)和短期前景(STF)模型, 分别。提出了一种新的机制来支持LTB和STF模型之间的相互作用。相互作用包括LTB和STF模型之间的权重传输和融合。在LTB和STF模型之间的权重传输过程中,在前一步步骤中的另一模型决定的指导下更新当前时间步长的一个模型(背景模型或前景模型)的样本权重。在背景 - 前景融合阶段,提出了一种统一的贝叶斯框架来检测对象,并且在后台和前景模型之间的后验比的对数给出任何时间步骤的检测结果。本文提出的这种互动方法提高了移动物体检测,防止模型中的死锁和退化的鲁棒性。实验结果表明,我们所提出的方法优于以前的形式。 (c)2018年由elsevier公司发布

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