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3 months ago

Deep Blind Video Super-resolution

Jinshan Pan Songsheng Cheng Jiawei Zhang Jinhui Tang

Deep Blind Video Super-resolution

Abstract

Existing video super-resolution (SR) algorithms usually assume that the blur kernels in the degradation process are known and do not model the blur kernels in the restoration. However, this assumption does not hold for video SR and usually leads to over-smoothed super-resolved images. In this paper, we propose a deep convolutional neural network (CNN) model to solve video SR by a blur kernel modeling approach. The proposed deep CNN model consists of motion blur estimation, motion estimation, and latent image restoration modules. The motion blur estimation module is used to provide reliable blur kernels. With the estimated blur kernel, we develop an image deconvolution method based on the image formation model of video SR to generate intermediate latent images so that some sharp image contents can be restored well. However, the generated intermediate latent images may contain artifacts. To generate high-quality images, we use the motion estimation module to explore the information from adjacent frames, where the motion estimation can constrain the deep CNN model for better image restoration. We show that the proposed algorithm is able to generate clearer images with finer structural details. Extensive experimental results show that the proposed algorithm performs favorably against state-of-the-art methods.

Code Repositories

csbhr/Deep-Blind-VSR
Official
pytorch
cscss/DBVSR
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
video-super-resolution-on-msu-super-1DBVSR + x265
BSQ-rate over ERQA: 13.145
BSQ-rate over LPIPS: 13.211
BSQ-rate over MS-SSIM: 1.438
BSQ-rate over PSNR: 6.607
BSQ-rate over VMAF: 1.383
video-super-resolution-on-msu-super-1DBVSR + vvenc
BSQ-rate over ERQA: 15.988
BSQ-rate over LPIPS: 11.435
BSQ-rate over MS-SSIM: 0.898
BSQ-rate over PSNR: 5.765
BSQ-rate over Subjective Score: 2.842
BSQ-rate over VMAF: 0.698
video-super-resolution-on-msu-super-1DBVSR + x264
BSQ-rate over ERQA: 1.606
BSQ-rate over LPIPS: 1.293
BSQ-rate over MS-SSIM: 0.714
BSQ-rate over PSNR: 1.082
BSQ-rate over VMAF: 0.75
video-super-resolution-on-msu-super-1DBVSR + aomenc
BSQ-rate over ERQA: 13.476
BSQ-rate over LPIPS: 4.916
BSQ-rate over MS-SSIM: 3.886
BSQ-rate over PSNR: 10.296
BSQ-rate over VMAF: 2.093
video-super-resolution-on-msu-super-1DBVSR + uavs3e
BSQ-rate over ERQA: 7.0
BSQ-rate over LPIPS: 4.371
BSQ-rate over MS-SSIM: 2.396
BSQ-rate over PSNR: 5.845
BSQ-rate over VMAF: 1.83
video-super-resolution-on-msu-video-upscalersDBVSR
PSNR: 27.28
SSIM: 0.937
VMAF: 57.39
video-super-resolution-on-msu-vsr-benchmarkDBVSR
1 - LPIPS: 0.921
ERQAv1.0: 0.737
FPS: 0.241
PSNR: 31.071
QRCRv1.0: 0.629
SSIM: 0.894
Subjective score: 6.947

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