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Tracking as Segmentation of Spatial-Temporal Volumes by Anisotropic Weighted TV

机译:各向异性加权电视作为时空体积分割的跟踪

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Tracking is usually interpreted as finding an object in single consecutive frames. Regularization is done by enforcing temporal smoothness of appearance, shape and motion. We propose a tracker, by interpreting the task of tracking as segmentation of a volume in 3D. Inherently temporal and spatial regularization is unified in a single regularization term. Segmentation is done by a variational approach using anisotropic weighted Total Variation (TV) regularization. The proposed convex energy is solved globally optimal by a fast primal-dual algorithm. Any image feature can be used in the segmentation cue of the proposed Mumford-Shah like data term. As a proof of concept we show experiments using a simple color-based appearance model. As demonstrated in the experiments, our tracking approach is able to handle large variations in shape and size, as well as partial and complete occlusions.
机译:跟踪通常被解释为在单个连续帧中找到对象。通过强制外观,形状和运动的时间平滑来完成正则化。通过将跟踪任务解释为3D中的体积分割,我们提出了一个跟踪器。固有的时间和空间正则化在单个正则化项中统一。通过使用各向异性加权总变化量(TV)正则化的变分方法完成分割。所提出的凸能量通过快速的原对偶算法全局求解。任何图像特征都可以用于拟议的Mumford-Shah类数据项的分割提示中。作为概念验证,我们展示了使用简单的基于颜色的外观模型进行的实验。如实验所示,我们的跟踪方法能够处理形状和大小的大变化以及部分和完全遮挡。

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