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Repetition Estimation

机译:重复估计

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摘要

Visual repetition is ubiquitous in our world. It appears in human activity (sports, cooking), animal behavior (a bee's waggle dance), natural phenomena (leaves in the wind) and in urban environments (flashing lights). Estimating visual repetition from realistic video is challenging as periodic motion is rarely perfectly static and stationary. To better deal with realistic video, we elevate the static and stationary assumptions often made by existing work. Our spatiotemporal filtering approach, established on the theory of periodic motion, effectively handles a wide variety of appearances and requires no learning. Starting from motion in 3D we derive three periodic motion types by decomposition of the motion field into its fundamental components. In addition, three temporal motion continuities emerge from the field's temporal dynamics. For the 2D perception of 3D motion we consider the viewpoint relative to the motion; what follows are 18 cases of recurrent motion perception. To estimate repetition under all circumstances, our theory implies constructing a mixture of differential motion maps: F, del F, delF and del xF. We temporally convolve the motion maps with wavelet filters to estimate repetitive dynamics. Our method is able to spatially segment repetitive motion directly from the temporal filter responses densely computed over the motion maps. For experimental verification of our claims, we use our novel dataset for repetition estimation, better-reflecting reality with non-static and non-stationary repetitive motion. On the task of repetition counting, we obtain favorable results compared to a deep learning alternative.
机译:视觉重复在我们的世界中普遍存在。它出现在人类活动(体育,烹饪),动物行为(蜜蜂的Waggle Dance),自然现象(风中的叶子)和城市环境(闪光灯)。从现实视频估计视觉重复是具有挑战性,因为周期性运动很少是完全静态和静止的。为了更好地处理现实视频,我们提升了现有工作的静态和静止假设。我们的时空滤波方法,在定期运动理论上建立,有效地处理各种外观,不需要学习。从3D中的运动开始,我们通过将运动场分解为其基本组件来源三种周期性运动类型。此外,三个时间动作连续性来自该领域的时间动态。对于3D运动的2D感知,我们考虑相对于运动的观点;以下是重复运动感知的18例。为了在所有情况下估算重复,我们的理论意味着构建差分运动映射的混合:f,del f,del f和 del xf。我们在临时与小波滤波器旋转运动映射以估计重复动态。我们的方法能够直接从运动映射上致密地计算的时间滤波器响应来分割重复运动。对于我们的索赔进行实验验证,我们使用我们的新型数据集进行重复估计,更好地反映出具有非静态和非静止重复运动的现实。关于重复计数的任务,与深度学习替代方案相比,我们获得了有利的结果。

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