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Real-time scene background initialization based on spatio-temporal neighborhood exploration

机译:基于时空邻域探索的实时场景背景初始化

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In this paper, we address the problem of scene background initialization to define a background model free from foreground objects. The complexity of this task resides in the continuous clutter of the scene by moving and stationary objects. To face this challenge, we propose a robust real-time iterative model completion method based on online block-level processing to initialize the background with low computational cost. First, temporal data analysis is conducted to cluster similar blocks. Meanwhile, a two-folded inter-block spatial neighborhood exploration is performed. It aims to capture relationships among neighboring clusters and reduce the number of candidate clusters employed in the next phase. Then, a smoothness analysis between neighboring locations is performed to iteratively reconstruct the background based on a newly proposed edge matching metric and an inter-block color discontinuity. Extensive evaluations of the proposed approach on the public Scene Background Initialization 2015 dataset and on the Scene Background Modeling Contest 2016 dataset revealed a performance superior or comparable to state-of-the-art methods.
机译:在本文中,我们解决了场景背景初始化的问题,以定义没有前景对象的背景模型。这项任务的复杂性在于场景中由于移动和静止的物体而造成的连续混乱。为了应对这一挑战,我们提出了一种基于在线块级处理的强大的实时迭代模型完成方法,以较低的计算成本来初始化背景。首先,进行时间数据分析以聚类相似的块。同时,进行了两次折叠的块间空间邻域探索。它旨在捕获相邻集群之间的关系并减少下一阶段中使用的候选集群的数量。然后,基于新提出的边缘匹配度量和块间颜色不连续性,执行相邻位置之间的平滑度分析以迭代地重建背景。在公共场景背景初始化2015数据集和场景背景建模竞赛2016数据集上对提议的方法进行了广泛的评估,结果表明该方法的性能优于或可与最新方法媲美。

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