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4 months ago

Detail-revealing Deep Video Super-resolution

Xin Tao; Hongyun Gao; Renjie Liao; Jue Wang; Jiaya Jia

Detail-revealing Deep Video Super-resolution

Abstract

Previous CNN-based video super-resolution approaches need to align multiple frames to the reference. In this paper, we show that proper frame alignment and motion compensation is crucial for achieving high quality results. We accordingly propose a `sub-pixel motion compensation' (SPMC) layer in a CNN framework. Analysis and experiments show the suitability of this layer in video SR. The final end-to-end, scalable CNN framework effectively incorporates the SPMC layer and fuses multiple frames to reveal image details. Our implementation can generate visually and quantitatively high-quality results, superior to current state-of-the-arts, without the need of parameter tuning.

Code Repositories

jiangsutx/SPMC_VideoSR
Official
tf
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-super-resolution-on-set14-4x-upscalingSPMC
PSNR: 27.57
SSIM: 0.76
video-super-resolution-on-msu-video-upscalersSPMC
PSNR: 26.99
SSIM: 0.933
VMAF: 51.96
video-super-resolution-on-vid4-4x-upscalingDRDVSR
PSNR: 25.88
SSIM: 0.774

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Detail-revealing Deep Video Super-resolution | Papers | HyperAI