Recurrent Back-Projection Network for Video Super-Resolution

We proposed a novel architecture for the problem of video super-resolution. We integrate spatial and temporal contexts from continuous video frames using a recurrent encoder-decoder module, that fuses multi-frame information with the more traditional, single frame super-resolution path for the target frame. In contrast to most prior work where frames are pooled together by stacking or warping, our model, the Recurrent Back-Projection Network (RBPN) treats each context frame as a separate source of information. These sources are combined in an iterative refinement framework inspired by the idea of back-projection in multiple-image super-resolution. This is aided by explicitly representing estimated inter-frame motion with respect to the target, rather than explicitly aligning frames. We propose a new video super-resolution benchmark, allowing evaluation at a larger scale and considering videos in different motion regimes. Experimental results demonstrate that our RBPN is superior to existing methods on several datasets.

PDF Abstract CVPR 2019 PDF CVPR 2019 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Video Super-Resolution MSU Super-Resolution for Video Compression RBPN + x264 BSQ-rate over ERQA 1.599 # 9
BSQ-rate over Subjective Score 1.498 # 25
BSQ-rate over VMAF 0.733 # 10
BSQ-rate over PSNR 1.127 # 8
BSQ-rate over MS-SSIM 0.729 # 8
BSQ-rate over LPIPS 1.335 # 18
Video Super-Resolution MSU Super-Resolution for Video Compression RBPN + aomenc BSQ-rate over ERQA 13.572 # 61
BSQ-rate over Subjective Score 2.7 # 37
BSQ-rate over VMAF 1.996 # 45
BSQ-rate over PSNR 10.89 # 58
BSQ-rate over MS-SSIM 3.089 # 46
BSQ-rate over LPIPS 5.821 # 49
Video Super-Resolution MSU Super-Resolution for Video Compression RBPN + x265 BSQ-rate over ERQA 13.185 # 55
BSQ-rate over Subjective Score 2.282 # 32
BSQ-rate over VMAF 1.324 # 25
BSQ-rate over PSNR 1.89 # 14
BSQ-rate over MS-SSIM 1.438 # 26
BSQ-rate over LPIPS 13.237 # 75
Video Super-Resolution MSU Super-Resolution for Video Compression RBPN + uavs3e BSQ-rate over ERQA 7.133 # 36
BSQ-rate over Subjective Score 2.944 # 43
BSQ-rate over VMAF 0.702 # 8
BSQ-rate over PSNR 6.301 # 33
BSQ-rate over MS-SSIM 2.263 # 40
BSQ-rate over LPIPS 4.859 # 42
Video Super-Resolution MSU Super-Resolution for Video Compression RBPN + vvenc BSQ-rate over ERQA 18.314 # 72
BSQ-rate over Subjective Score 2.719 # 38
BSQ-rate over VMAF 0.689 # 4
BSQ-rate over PSNR 5.783 # 27
BSQ-rate over MS-SSIM 0.884 # 17
BSQ-rate over LPIPS 11.777 # 66
Video Super-Resolution MSU Video Super Resolution Benchmark: Detail Restoration RBPN Subjective score 7.068 # 3
ERQAv1.0 0.746 # 4
QRCRv1.0 0.629 # 3
SSIM 0.899 # 3
PSNR 31.407 # 3
FPS 0.043 # 31
1 - LPIPS 0.74 # 30
Video Super-Resolution Vid4 - 4x upscaling RBPN/6-PF PSNR 27.12 # 10
SSIM 0.8180 # 10
Video Super-Resolution Vid4 - 4x upscaling - BD degradation RBPN PSNR 27.17 # 15
SSIM 0.8205 # 16

Methods