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Tensor learningusing N-mode SVD for dynamic background modelling and subtraction

机译:使用N模式SVD进行张量学习以进行动态背景建模和减法

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Background modelling and subtraction is an essential component in motion analysis with wide range of applications in computer vision, whereas the task becomes more challenging in context of complex scenarios such as dynamic backgrounds. In this paper, we address the problem of modelling dynamic backgrounds in online tensor leaning framework. We use Tucker decomposition to model the spatio-temporal correlation of video background. To facilitate the online execution of foreground detection, we incrementally update the subspace factor matrices and core tensor by using the N-mode SVD. For the upcoming frame, the estimate of new basis matrix is updated, whereas the contents from last observation are removed. Similarity measure based on pixel values is carried out to produce the foreground mask. Visual analysis on video datasets has revealed that the proposed approach is well suited against dynamically varying backgrounds. Our quantitative results show that the proposed strategy is superior to state-of-the-art methods.
机译:背景建模和减法是运动分析中不可或缺的组成部分,在计算机视觉中具有广泛的应用,而在复杂场景(例如动态背景)的情况下,任务变得更具挑战性。在本文中,我们解决了在在线张量倾斜框架中对动态背景进行建模的问题。我们使用Tucker分解对视频背景的时空相关性进行建模。为了方便在线执行前景检测,我们使用N模式SVD增量更新子空间因子矩阵和核心张量。对于即将到来的帧,将更新新的基础矩阵的估计,同时删除上次观察的内容。基于像素值的相似性度量被执行以产生前景掩模。对视频数据集的视觉分析表明,该方法非常适合动态变化的背景。我们的定量结果表明,提出的策略优于最新方法。

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