Image Super Resolution On Set5 2X Upscaling
Métriques
PSNR
SSIM
Résultats
Résultats de performance de divers modèles sur ce benchmark
Tableau comparatif
Nom du modèle | PSNR | SSIM |
---|---|---|
image-restoration-using-convolutional-auto | 37.66 | 0.9599 |
fast-and-accurate-image-super-resolution-by | 37.13 | .9569 |
accurate-image-super-resolution-using-very | 37.53 | - |
drct-saving-image-super-resolution-away-from | 39.14 | 0.9658 |
activating-more-pixels-in-image-super | 38.73 | 0.9637 |
hierarchical-back-projection-network-for | 38.13 | 0.961 |
channel-partitioned-windowed-attention-and | 38.68 | 0.9633 |
beyond-a-gaussian-denoiser-residual-learning | 37.58 | - |
ml-craist-multi-scale-low-high-frequency | 38.19 | 0.9617 |
neural-nearest-neighbors-networks | 37.57 | - |
feature-based-adaptive-contrastive | 38.242 | - |
deep-back-projection-networks-for-single | 38.08 | 0.96 |
mair-a-locality-and-continuity-preserving | 38.62 | 0.963 |
progressive-multi-scale-residual-network-for | 38.22 | 0.9612 |
a-framework-for-real-time-object-detection | 38.21 | 0.9614 |
lightweight-image-super-resolution-with-1 | 38.00 | - |
channel-partitioned-windowed-attention-and | 38.72 | 0.9635 |
drct-saving-image-super-resolution-away-from | 38.72 | 0.9646 |
learning-deep-cnn-denoiser-prior-for-image | 35.05 | - |
one-size-fits-all-hypernetwork-for-tunable | 36.69 | 0.94 |
activating-more-pixels-in-image-super | 38.91 | 0.9646 |
cascade-convolutional-neural-network-for | 37.45 | 0.9570 |
fast-accurate-and-lightweight-super | 37.82 | - |
hmanet-hybrid-multi-axis-aggregation-network | 38.95 | 0.9649 |
swinfir-revisiting-the-swinir-with-fast | 38.65 | 0.9633 |
fast-accurate-and-lightweight-super-1 | 37.76 | - |
image-restoration-using-deep-regulated | 37.42 | - |
lightweight-feature-fusion-network-for-single | 37.66 | 0.9585 |
deeply-recursive-convolutional-network-for | 37.63 | - |
on-efficient-transformer-and-image-pre | 38.63 | 0.9632 |
densely-residual-laplacian-super-resolution | 38.34 | 0.9619 |
swinfir-revisiting-the-swinir-with-fast | 38.74 | - |
mair-a-locality-and-continuity-preserving | 38.56 | 0.9628 |
local-texture-estimator-for-implicit | 38.33 | - |
feedback-network-for-image-super-resolution | 38.11 | - |
sub-pixel-back-projection-network-for | 38.05 | 0.9606 |
image-super-resolution-with-cross-scale-non | 38.28 | 0.9616 |
single-image-super-resolution-via-a-holistic | 38.33 | 0.9299 |
ml-craist-multi-scale-low-high-frequency | 38.15 | 0.9615 |
multi-level-wavelet-cnn-for-image-restoration | 37.91 | - |
hierarchical-information-flow-for-generalized | 38.87 | 0.9663 |