Hierarchical representation of videos with spatio-temporal fibers

Ratnesh Kumar, G. Charpiat, M. Thonnat
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引用次数: 2

Abstract

We propose a new representation of videos, as spatio-temporal fibers. These fibers are clusters of trajectories that are meshed spatially in the image domain. They form a hierarchical partition of the video into regions that are coherent in time and space. They can be seen as dense, spatially-organized, long-term optical flow. Their robustness to noise and ambiguities is ensured by taking into account the reliability of each source of information. As fibers allow users to handle easily moving objects in videos, they prove useful for video editing, as demonstrated in a video inpainting example.
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具有时空纤维的视频分层表示
我们提出了一种新的视频表示,作为时空纤维。这些纤维是在图像域空间网格化的轨迹簇。它们将视频分层划分为在时间和空间上一致的区域。它们可以被看作是密集的、有空间组织的、长期的光流。它们对噪声和模糊性的鲁棒性是通过考虑每个信息源的可靠性来保证的。由于纤维允许用户在视频中轻松处理移动物体,它们被证明对视频编辑很有用,如视频中所示。
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