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Video epitomes

机译:视频缩影

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摘要

Recently, "epitomes" were introduced as patch-based probability models that are learned by compiling together a large number of examples of patches from input images. In this paper, we describe how epitomes can be used to model video data and we describe significant computational speedups that can be incorporated into the epitome inference and learning algorithm. In the case of videos, epitomes are estimated so as to model most of the small spacetime cubes from the input data. Then, the epitome can be used for various modeling and reconstruction tasks, of which we show results for video super-resolution, video interpolation, and object removal. Besides computational efficiency, an interesting advantage of the epitome as a representation is that it can be reliably estimated even from videos with large amounts of missing data. We illustrate this ability on the task of reconstructing the dropped frames in video broadcast using only the degraded video and also in denoising a severely corrupted video.
机译:近来,“表位”被引入作为基于补丁的概率模型,其通过将来自输入图像的补丁的大量示例汇集在一起​​而获知。在本文中,我们描述了如何使用缩略词对视频数据进行建模,并描述了可并入缩略词推论和学习算法的显着计算速度。在视频的情况下,估计缩影,以便根据输入数据对大多数小时空立方体进行建模。然后,该缩影可用于各种建模和重建任务,其中我们展示了视频超分辨率,视频插值和对象去除的结果。除了计算效率外,缩影作为代表的有趣优势在于,即使从视频中丢失大量数据,也可以可靠地对其进行估计。我们在仅使用降级的视频以及对严重损坏的视频进行降噪的视频广播中重建掉帧的任务上说明了这种能力。

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