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Panoramic Gaussian Mixture Model and large-scale range background substraction method for PTZ camera-based surveillance systems

机译:基于云台摄像机监控系统的全景高斯混合模型和大范围背景减影方法

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摘要

In this paper, we present a novel approach for constructing a large-scale range panoramic background model that provides fast registration of the observed frame and localizes the foreground targets with arbitrary camera direction and scale in a Pan-tilt-zoom (PTZ) camera-based surveillance system. Our method consists of three stages. (1) In the first stage, a panoramic Gaussian mixture model (PGMM) of the PTZ camera's field of view is generated off-line for later use in on-line foreground detection. (2) In the second stage, a multi-layered correspondence ensemble is generated off-line from frames captured at different scales which is used by the correspondence propagation method to register observed frames online to the PGMM. (3) In the third stage, foreground is detected and the PGMM is updated. The proposed method has the capacity to deal with the PTZ camera's ability to cover a wide field of view (FOV) and large-scale range. We demonstrate the advantages of the proposed PGMM background subtraction method by incorporating it with a tracking system for surveillance applications.
机译:在本文中,我们提出了一种用于构建大范围全景背景模型的新颖方法,该模型可提供对被观察帧的快速配准,并在全景云台(PTZ)摄像机中以任意摄像机方向和比例来定位前景目标,基于监视的系统。我们的方法包括三个阶段。 (1)在第一阶段,离线生成PTZ摄像机视场的全景高斯混合模型(PGMM),以供以后在在线前景检测中使用。 (2)在第二阶段,从以不同比例捕获的帧离线生成多层对应集合,该集合通过对应传播方法用于将观测到的帧在线注册到PGMM。 (3)在第三阶段,检测到前景并更新PGMM。所提出的方法有能力应对PTZ摄像机涵盖广阔视场(FOV)和大范围范围的能力。通过将其与监视应用程序的跟踪系统相结合,我们证明了所提出的PGMM背景扣除方法的优点。

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