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Dynamic tree-structured sparse RPCA via column subset selection for background modeling and foreground detection

机译:通过列子集选择的动态树结构稀疏RPCA,用于背景建模和前景检测

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Video analysis often begins with background subtraction, which consists of creation of a background model that allows distinguishing foreground pixels. Recent evaluation of background subtraction techniques demonstrated that there are still considerable challenges facing these methods. Processing per-pixel basis from the background is not only time-consuming but also can dramatically affect foreground region detection, if region cohesion and contiguity is not considered in the model. We present a new method in which we regard the image sequence to be made up of the sum of a low-rank background matrix and a dynamic tree-structured sparse matrix, and solve the decomposition using our approximated Robust Principal Component Analysis method extended to handle camera motion. Furthermore, to reduce the curse of dimensionality and scale, we introduce a low-rank background modeling via Column Subset Selection that reduces the order of complexity, decreases computation time, and eliminates the huge storage need for large videos.
机译:视频分析通常从背景减法开始,背景减法包括创建可区分前景像素的背景模型。最近对背景减法技术的评估表明,这些方法仍然面临相当大的挑战。如果在模型中未考虑区域内聚和连续性,则从背景处理每个像素不仅耗时,而且会极大地影响前景区域的检测。我们提出了一种新方法,其中我们认为图像序列由低秩背景矩阵和动态树结构稀疏矩阵的总和组成,并使用扩展到处理的近似鲁棒主成分分析方法来解决分解问题相机运动。此外,为了减少维度和规模的诅咒,我们通过“列子集选择”引入了低秩背景建模,从而降低了复杂性的顺序,减少了计算时间,并消除了大型视频的巨大存储需求。

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