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End-to-End Learning of Video Super-Resolution with Motion Compensation

机译:具有运动补偿的视频超分辨率的端到端学习

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Learning approaches have shown great success in the task of super-resolving an image given a low resolution input. Video superre-solution aims for exploiting additionally the information from multiple images. Typically, the images are related via optical flow and consecutive image warping. In this paper, we provide an end-to-end video superresolution network that, in contrast to previous works, includes the estimation of optical flow in the overall network architecture. We analyze the usage of optical flow for video super-resolution and find that common off-the-shelf image warping does not allow video super-resolution to benefit much from optical flow. We rather propose an operation for motion compensation that performs warping from low to high resolution directly. We show that with this network configuration, video super-resolution can benefit from optical flow and we obtain state-of-the-art results on the popular test sets. We also show that the processing of whole images rather than independent patches is responsible for a large increase in accuracy.
机译:学习方法在给定低分辨率输入时,在超级解析图像的任务中表现出巨大的成功。视频卓越解决方案旨在仅利用来自多个图像的信息。通常,图像通过光流和连续图像翘曲相关。在本文中,我们提供了端到端的视频超级化网络,与之前的作品相比,包括整体网络架构中的光流的估计。我们分析了视频超分辨率的光流量的使用,发现常见的现成图像翘曲不允许视频超分辨率从光学流动中受益。我们宁愿提出一个动作补偿的操作,直接从低到高分辨率进行翘曲。我们认为,通过这种网络配置,视频超分辨率可以受益于光学流量,并在流行的测试集上获得最先进的结果。我们还表明,整个图像的处理而不是独立贴片的处理是大量提高的准确性。

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