HyperAI超神経

Image Super Resolution On Manga109 2X

評価指標

PSNR
SSIM

評価結果

このベンチマークにおける各モデルのパフォーマンス結果

比較表
モデル名PSNRSSIM
ml-craist-multi-scale-low-high-frequency39.260.9786
ml-craist-multi-scale-low-high-frequency39.230.9785
lightweight-feature-fusion-network-for-single37.930.9746
activating-more-pixels-in-image-super41.010.9831
image-super-resolution-with-cross-scale-non39.370.9785
feedback-network-for-image-super-resolution39.08-
progressive-multi-scale-residual-network-for39.150.9781
channel-partitioned-windowed-attention-and40.590.9816
hmanet-hybrid-multi-axis-aggregation-network41.130.9836
drct-saving-image-super-resolution-away-from40.410.9814
drct-saving-image-super-resolution-away-from41.140.9842
densely-residual-laplacian-super-resolution39.750.9792
activating-more-pixels-in-image-super40.710.9819
lightweight-image-super-resolution-with-138.88-
channel-partitioned-windowed-attention-and40.480.9814
swinfir-revisiting-the-swinir-with-fast40.77-
hierarchical-back-projection-network-for39.30.979
single-image-super-resolution-via-a-holistic39.620.9787
swinfir-revisiting-the-swinir-with-fast40.610.9816
hierarchical-information-flow-for-generalized41.220.9846
deep-back-projection-networks-for-single39.280.977