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Papers/Learning Cross-Video Neural Representations for High-Quali...

Learning Cross-Video Neural Representations for High-Quality Frame Interpolation

Wentao Shangguan, Yu Sun, Weijie Gan, Ulugbek S. Kamilov

2022-02-28Vocal Bursts Intensity PredictionVideo Frame Interpolation
PaperPDFCode(official)

Abstract

This paper considers the problem of temporal video interpolation, where the goal is to synthesize a new video frame given its two neighbors. We propose Cross-Video Neural Representation (CURE) as the first video interpolation method based on neural fields (NF). NF refers to the recent class of methods for the neural representation of complex 3D scenes that has seen widespread success and application across computer vision. CURE represents the video as a continuous function parameterized by a coordinate-based neural network, whose inputs are the spatiotemporal coordinates and outputs are the corresponding RGB values. CURE introduces a new architecture that conditions the neural network on the input frames for imposing space-time consistency in the synthesized video. This not only improves the final interpolation quality, but also enables CURE to learn a prior across multiple videos. Experimental evaluations show that CURE achieves the state-of-the-art performance on video interpolation on several benchmark datasets.

Results

TaskDatasetMetricValueModel
VideoVimeo90KPSNR35.73CURE
VideoVimeo90KSSIM0.9789CURE
VideoSNU-FILM (medium)PSNR35.94CURE
VideoSNU-FILM (medium)SSIM0.9797CURE
VideoNvidia Dynamic ScenePSNR36.24CURE
VideoNvidia Dynamic SceneSSIM0.9839CURE
VideoSNU-FILM (easy)PSNR39.9CURE
VideoSNU-FILM (easy)SSIM0.991CURE
VideoUCF101PSNR35.36CURE
VideoUCF101SSIM0.9705CURE
VideoSNU-FILM (extreme)PSNR25.44CURE
VideoSNU-FILM (extreme)SSIM0.8638CURE
VideoSNU-FILM (hard)PSNR30.66CURE
VideoSNU-FILM (hard)SSIM0.9373CURE
VideoMSU Video Frame InterpolationLPIPS0.029CURE
VideoMSU Video Frame InterpolationMS-SSIM0.946CURE
VideoMSU Video Frame InterpolationPSNR28.01CURE
VideoMSU Video Frame InterpolationSSIM0.92CURE
VideoMSU Video Frame InterpolationVMAF67.07CURE
VideoX4K1000FPS-2KPSNR30.05CURE
VideoX4K1000FPS-2KSSIM0.8998CURE
VideoXiph 4kPSNR30.94CURE
VideoXiph 4kSSIM0.9389CURE
Video Frame InterpolationVimeo90KPSNR35.73CURE
Video Frame InterpolationVimeo90KSSIM0.9789CURE
Video Frame InterpolationSNU-FILM (medium)PSNR35.94CURE
Video Frame InterpolationSNU-FILM (medium)SSIM0.9797CURE
Video Frame InterpolationNvidia Dynamic ScenePSNR36.24CURE
Video Frame InterpolationNvidia Dynamic SceneSSIM0.9839CURE
Video Frame InterpolationSNU-FILM (easy)PSNR39.9CURE
Video Frame InterpolationSNU-FILM (easy)SSIM0.991CURE
Video Frame InterpolationUCF101PSNR35.36CURE
Video Frame InterpolationUCF101SSIM0.9705CURE
Video Frame InterpolationSNU-FILM (extreme)PSNR25.44CURE
Video Frame InterpolationSNU-FILM (extreme)SSIM0.8638CURE
Video Frame InterpolationSNU-FILM (hard)PSNR30.66CURE
Video Frame InterpolationSNU-FILM (hard)SSIM0.9373CURE
Video Frame InterpolationMSU Video Frame InterpolationLPIPS0.029CURE
Video Frame InterpolationMSU Video Frame InterpolationMS-SSIM0.946CURE
Video Frame InterpolationMSU Video Frame InterpolationPSNR28.01CURE
Video Frame InterpolationMSU Video Frame InterpolationSSIM0.92CURE
Video Frame InterpolationMSU Video Frame InterpolationVMAF67.07CURE
Video Frame InterpolationX4K1000FPS-2KPSNR30.05CURE
Video Frame InterpolationX4K1000FPS-2KSSIM0.8998CURE
Video Frame InterpolationXiph 4kPSNR30.94CURE
Video Frame InterpolationXiph 4kSSIM0.9389CURE

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