HyperAI超神经

Image Super Resolution On Set14 2X Upscaling

评估指标

PSNR
SSIM

评测结果

各个模型在此基准测试上的表现结果

比较表格
模型名称PSNRSSIM
drct-saving-image-super-resolution-away-from35.360.9302
ml-craist-multi-scale-low-high-frequency33.640.9213
channel-partitioned-windowed-attention-and34.910.9277
a-framework-for-real-time-object-detection33.970.922
multi-level-wavelet-cnn-for-image-restoration33.7-
mair-a-locality-and-continuity-preserving34.750.9268
cascade-convolutional-neural-network-for34.340.9240
activating-more-pixels-in-image-super35.290.9293
activating-more-pixels-in-image-super35.130.9282
channel-partitioned-windowed-attention-and34.970.9280
drct-saving-image-super-resolution-away-from34.960.9287
densely-residual-laplacian-super-resolution34.430.9247
hierarchical-back-projection-network-for33.780.921
deeply-recursive-convolutional-network-for33.04-
beyond-a-gaussian-denoiser-residual-learning33.03-
deep-back-projection-networks-for-single34.090.921
learning-deep-cnn-denoiser-prior-for-image30.79-
swinfir-revisiting-the-swinir-with-fast35.17-
ml-craist-multi-scale-low-high-frequency33.770.922
single-image-super-resolution-via-a-holistic34.240.9224
accurate-image-super-resolution-using-very33.03-
hierarchical-information-flow-for-generalized35.270.9311
fast-and-accurate-image-super-resolution-by33.05.9126
hmanet-hybrid-multi-axis-aggregation-network35.330.9297
lightweight-image-super-resolution-with-133.63-
swinfir-revisiting-the-swinir-with-fast34.930.9276
image-super-resolution-with-cross-scale-non34.120.9223
feedback-network-for-image-super-resolution33.82-
sub-pixel-back-projection-network-for33.620.9178
fast-and-accurate-image-super-resolution-by32.71.9090
fast-accurate-and-lightweight-super33.55-
image-restoration-using-convolutional-auto32.940.9144
fast-accurate-and-lightweight-super-133.52-
fast-accurate-and-lightweight-super-133.26-
local-texture-estimator-for-implicit34.25-