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Spatio-Temporal Video Segmentation of Static Scenes and Its Applications

机译:静态场景的时空视频分割及其应用

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Extracting spatio-temporally consistent segments from a video sequence is a challenging problem due to the complexity of color, motion and occlusions. Most existing spatio-temporal segmentation approaches have inherent difficulties in handling large displacement with significant occlusions . This paper presents a novel framework for spatio-temporal segmentation. With the estimated depth data beforehand by a multi-view stereo technique, we project the pixels to other frames for collecting the boundary and segmentation statistics in a video, and incorporate them into the segmentation energy for spatio-temporal optimization. In order to effectively solve this problem, we introduce an iterative optimization scheme by first initializing segmentation maps for each frame independently, and then link the correspondences among different frames and iteratively refine them with the collected statistics, so that a set of spatio-temporally consistent volume segments are finally achieved. The effectiveness and usefulness of our automatic framework are demonstrated via its applications for 3D reconstruction, video editing and semantic segmentation on a variety of challenging video examples.
机译:由于颜色,运动和遮挡的复杂性,从视频序列中提取时空一致的片段是一个具有挑战性的问题。大多数现有的时空分割方法在处理具有明显遮挡的大位移时都存在固有的困难。本文提出了一种时空分割的新颖框架。借助多视图立体技术预先估计的深度数据,我们将像素投影到其他帧以收集视频中的边界和分段统计信息,并将其合并到分段能量中以进行时空优化。为了有效地解决这个问题,我们引入了一种迭代优化方案,首先针对每个帧独立初始化分割图,然后链接不同帧之间的对应关系,并使用收集到的统计信息对它们进行迭代地细化,从而获得一组时空一致的最终实现了销量细分。我们的自动框架的有效性和实用性通过其在各种具有挑战性的视频示例上的3D重建,视频编辑和语义分割的应用程序得以展示。

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