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Papers/Neighbor Correspondence Matching for Flow-based Video Fram...

Neighbor Correspondence Matching for Flow-based Video Frame Synthesis

Zhaoyang Jia, Yan Lu, Houqiang Li

2022-07-14Video Compression4kVideo Frame Interpolation
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Abstract

Video frame synthesis, which consists of interpolation and extrapolation, is an essential video processing technique that can be applied to various scenarios. However, most existing methods cannot handle small objects or large motion well, especially in high-resolution videos such as 4K videos. To eliminate such limitations, we introduce a neighbor correspondence matching (NCM) algorithm for flow-based frame synthesis. Since the current frame is not available in video frame synthesis, NCM is performed in a current-frame-agnostic fashion to establish multi-scale correspondences in the spatial-temporal neighborhoods of each pixel. Based on the powerful motion representation capability of NCM, we further propose to estimate intermediate flows for frame synthesis in a heterogeneous coarse-to-fine scheme. Specifically, the coarse-scale module is designed to leverage neighbor correspondences to capture large motion, while the fine-scale module is more computationally efficient to speed up the estimation process. Both modules are trained progressively to eliminate the resolution gap between training dataset and real-world videos. Experimental results show that NCM achieves state-of-the-art performance on several benchmarks. In addition, NCM can be applied to various practical scenarios such as video compression to achieve better performance.

Results

TaskDatasetMetricValueModel
VideoVimeo90KPSNR35.88NCM-Base
VideoVimeo90KSSIM0.9795NCM-Base
VideoUCF101PSNR35.36NCM-Base
VideoUCF101SSIM0.9695NCM-Base
VideoX4K1000FPSPSNR31.63NCM-Base
VideoX4K1000FPSSSIM0.9185NCM-Base
Video Frame InterpolationVimeo90KPSNR35.88NCM-Base
Video Frame InterpolationVimeo90KSSIM0.9795NCM-Base
Video Frame InterpolationUCF101PSNR35.36NCM-Base
Video Frame InterpolationUCF101SSIM0.9695NCM-Base
Video Frame InterpolationX4K1000FPSPSNR31.63NCM-Base
Video Frame InterpolationX4K1000FPSSSIM0.9185NCM-Base

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