学习连续时空超分辨率视频隐式神经表示

Zeyuan Chen, Yinbo Chen, Jingwen Liu, Xingqian Xu, Vidit Goel, Zhangyang Wang, Humphrey Shi, Xiaolong Wang
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引用次数: 39

摘要

视频通常将流和连续的视觉数据记录为离散的连续帧。由于高保真视频的存储成本昂贵,大多数视频都是以相对较低的分辨率和帧率存储的。时空视频超分辨率(STVSR)是将时间插值和空间超分辨率结合在一个统一的框架中的最新研究成果。然而,它们中的大多数只支持固定的上采样尺度,这限制了它们的灵活性和应用。在这项工作中,我们提出了视频隐式神经表示(VideoINR),而不是遵循离散表示,并展示了其在STVSR中的应用。学习到的内隐神经表示可以解码成任意空间分辨率和帧率的视频。我们表明,VideoINR在常见的上采样尺度上使用最先进的STVSR方法取得了具有竞争力的表现,并且在连续和非训练分布尺度上显著优于先前的工作。我们的项目页面在这里,代码可以在https://github.com/Picsart-AI-Research/VideoINR-Continuous-Space-Time-Super-Resolution上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VideoINR: Learning Video Implicit Neural Representation for Continuous Space-Time Super-Resolution
Videos typically record the streaming and continuous visual data as discrete consecutive frames. Since the storage cost is expensive for videos of high fidelity, most of them are stored in a relatively low resolution and frame rate. Recent works of Space-Time Video Super-Resolution (STVSR) are developed to incorporate temporal interpolation and spatial super-resolution in a unified framework. However, most of them only support a fixed up-sampling scale, which limits their flexibility and applications. In this work, instead of following the discrete representations, we propose Video Implicit Neural Representation (VideoINR), and we show its applications for STVSR. The learned implicit neural representation can be decoded to videos of arbitrary spatial resolution and frame rate. We show that VideoINR achieves competitive performances with state-of-the-art STVSR methods on common up-sampling scales and significantly outperforms prior works on continuous and out-of-training-distribution scales. Our project page is at here and code is available at https://github.com/Picsart-AI-Research/VideoINR-Continuous-Space-Time-Super-Resolution.
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