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3 months ago

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

Wentao Shangguan Yu Sun Weijie Gan Ulugbek S. Kamilov

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

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.

Code Repositories

wustl-cig/CURE
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
video-frame-interpolation-on-msu-video-frameCURE
LPIPS: 0.029
MS-SSIM: 0.946
PSNR: 28.01
SSIM: 0.920
VMAF: 67.07
video-frame-interpolation-on-nvidia-dynamicCURE
PSNR: 36.24
SSIM: 0.9839
video-frame-interpolation-on-snu-film-easyCURE
PSNR: 39.9
SSIM: 0.9910
video-frame-interpolation-on-snu-film-extremeCURE
PSNR: 25.44
SSIM: 0.8638
video-frame-interpolation-on-snu-film-hardCURE
PSNR: 30.66
SSIM: 0.9373
video-frame-interpolation-on-snu-film-mediumCURE
PSNR: 35.94
SSIM: 0.9797
video-frame-interpolation-on-ucf101-1CURE
PSNR: 35.36
SSIM: 0.9705
video-frame-interpolation-on-vimeo90kCURE
PSNR: 35.73
SSIM: 0.9789
video-frame-interpolation-on-x4k1000fps-2kCURE
PSNR: 30.05
SSIM: 0.8998
video-frame-interpolation-on-xiph-4kCURE
PSNR: 30.94
SSIM: 0.9389

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Learning Cross-Video Neural Representations for High-Quality Frame Interpolation | Papers | HyperAI