无显式运动补偿的动态上采样滤波器深度视频超分辨率网络

Younghyun Jo, Seoung Wug Oh, Jaeyeon Kang, Seon Joo Kim
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引用次数: 439

摘要

最近,视频超分辨率(VSR)在为超高清显示器提供高分辨率(HR)内容方面变得更加重要。虽然已经提出了许多基于深度学习的VSR方法,但大多数方法都严重依赖于运动估计和补偿的准确性。我们在本文中介绍了一个完全不同的VSR框架。我们提出了一种新的端到端深度神经网络,该网络生成动态上采样滤波器和残差图像,残差图像根据每个像素的局部时空邻域计算,以避免显式的运动补偿。利用我们的方法,使用动态上采样滤波器直接从输入图像重建HR图像,并通过计算残差添加精细细节。与以前的方法相比,我们的网络在新的数据增强技术的帮助下可以生成更清晰的HR视频,并且具有时间一致性。我们还通过大量的实验对我们的网络进行了分析,以展示网络如何隐式地处理运动。
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Deep Video Super-Resolution Network Using Dynamic Upsampling Filters Without Explicit Motion Compensation
Video super-resolution (VSR) has become even more important recently to provide high resolution (HR) contents for ultra high definition displays. While many deep learning based VSR methods have been proposed, most of them rely heavily on the accuracy of motion estimation and compensation. We introduce a fundamentally different framework for VSR in this paper. We propose a novel end-to-end deep neural network that generates dynamic upsampling filters and a residual image, which are computed depending on the local spatio-temporal neighborhood of each pixel to avoid explicit motion compensation. With our approach, an HR image is reconstructed directly from the input image using the dynamic upsampling filters, and the fine details are added through the computed residual. Our network with the help of a new data augmentation technique can generate much sharper HR videos with temporal consistency, compared with the previous methods. We also provide analysis of our network through extensive experiments to show how the network deals with motions implicitly.
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