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Spatial Multimodal Mean Background Model forReal-Time MTI

机译:空间多模式平均背景模型Forreal-Time MTI

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One of the important tasks in video surveillance is to detect and track targets moving independently in a scene. Most real-time research to date has focused on scenarios from stationary cameras where there is limited movement in the background, such as videos taken at traffic lights or from buildings where there is no background proximal to the background. A more robust method is needed when there are moving background objects such as trees or flags close in the camera or when the camera is moving. In this paper we first introduce a variant of the multimodal mean (MM) background model that we call the spatial multimodal mean (SMM) background model that is better suited for these scenarios while improving the speed of the mixture of Gaussians (MoG) background model. It approximates the multimodal MoG background with the generalization that each pixel has a random spatial distribution. The SMM background model is well suited for real-time nonstationary scenes since it models each pixel with a spatial distribution and the simplifications make it computationally feasible to apply image transformations. We then describe how this can be integrated into a real-time MTI system that does not require the estimation of depth.
机译:视频监控中的一个重要任务是检测和跟踪在场景中独立移动的目标。迄今为止的大多数实时研究都集中在静止摄像机中的情景,其中背景中的运动有限,例如在红绿灯处拍摄的视频或从背景中没有背景的建筑物。当有移动背景物体(例如相机)或相机移动时,需要更强大的方法。在本文中,我们首先介绍了我们称之为空间多模式(SMM)背景模型的多模式平均值(MM)背景模型的变体,这更适合这些方案,同时提高高斯(MOG)背景模型的混合速度。它近似于多峰雾背景与概括,即每个像素具有随机空间分布。 SMM背景模型非常适用于实时非间断场景,因为它模拟了空间分布的每个像素,并且简化使其在计算上应用图像变换。然后,我们描述如何集成到不需要估计深度的实时MTI系统中。

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