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Video Frame Interpolation via Adaptive Separable Convolution

机译:通过自适应可分离卷积的视频帧插值

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Standard video frame interpolation methods first estimate optical flow between input frames and then synthesize an intermediate frame guided by motion. Recent approaches merge these two steps into a single convolution process by convolving input frames with spatially adaptive kernels that account for motion and re-sampling simultaneously. These methods require large kernels to handle large motion, which limits the number of pixels whose kernels can be estimated at once due to the large memory demand. To address this problem, this paper formulates frame interpolation as local separable convolution over input frames using pairs of 1D kernels. Compared to regular 2D kernels, the 1D kernels require significantly fewer parameters to be estimated. Our method develops a deep fully convolutional neural network that takes two input frames and estimates pairs of 1D kernels for all pixels simultaneously. Since our method is able to estimate kernels and synthesizes the whole video frame at once, it allows for the incorporation of perceptual loss to train the neural network to produce visually pleasing frames. This deep neural network is trained end-to-end using widely available video data without any human annotation. Both qualitative and quantitative experiments show that our method provides a practical solution to high-quality video frame interpolation.
机译:标准视频帧插值方法首先估计输入帧之间的光学流动,然后合成由运动引导的中间帧。最近的方法通过将输入帧与空间自适应内核卷积,将这两个步骤合并到单个卷积过程中,该卷曲具有用于同时进行运动和重新采样的空间自适应内核。这些方法需要大的核来处理大型运动,这限制了由于大的内存需求而估计内核的像素数。为了解决这个问题,本文将帧插值制定为使用1D内核对的输入帧上的局部可分离卷积。与常规2D内核相比,1D内核需要估计较少的参数。我们的方法开发了一个深度完全卷积的神经网络,其采用两个输入帧并同时为所有像素估计1D内核对。由于我们的方法能够一次估计内核并一次合成整个视频帧,因此它允许加入感知损失来训练神经网络以产生视觉上令人愉悦的框架。这种深度神经网络在没有任何人类注释的情况下使用广泛的视频数据训练结束到底。定性和定量实验都表明,我们的方法为高质量的视频帧插值提供了实用的解决方案。

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