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Results

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Original Source

Results

CSV files containing an ImageNet-1K and out-of-distribution (OOD) test set validation results for all models with pretrained weights is located in the repository results folder.

Self-trained Weights

The table below includes ImageNet-1k validation results of model weights that I've trained myself. It is not updated as frequently as the csv results outputs linked above.

ModelAcc@1 (Err)Acc@5 (Err)Param # (M)InterpolationImage Size
efficientnet_b3a82.242 (17.758)96.114 (3.886)12.23bicubic320 (1.0 crop)
efficientnet_b382.076 (17.924)96.020 (3.980)12.23bicubic300
regnet_3282.002 (17.998)95.906 (4.094)19.44bicubic224
skresnext50d_32x4d81.278 (18.722)95.366 (4.634)27.5bicubic288 (1.0 crop)
seresnext50d_32x4d81.266 (18.734)95.620 (4.380)27.6bicubic224
efficientnet_b2a80.608 (19.392)95.310 (4.690)9.11bicubic288 (1.0 crop)
resnet50d80.530 (19.470)95.160 (4.840)25.6bicubic224
mixnet_xl80.478 (19.522)94.932 (5.068)11.90bicubic224
efficientnet_b280.402 (19.598)95.076 (4.924)9.11bicubic260
seresnet5080.274 (19.726)95.070 (4.930)28.1bicubic224
skresnext50d_32x4d80.156 (19.844)94.642 (5.358)27.5bicubic224
cspdarknet5380.058 (19.942)95.084 (4.916)27.6bicubic256
cspresnext5080.040 (19.960)94.944 (5.056)20.6bicubic224
resnext50_32x4d79.762 (20.238)94.600 (5.400)25bicubic224
resnext50d_32x4d79.674 (20.326)94.868 (5.132)25.1bicubic224
cspresnet5079.574 (20.426)94.712 (5.288)21.6bicubic256
ese_vovnet39b79.320 (20.680)94.710 (5.290)24.6bicubic224
resnetblur5079.290 (20.710)94.632 (5.368)25.6bicubic224
dpn68b79.216 (20.784)94.414 (5.586)12.6bicubic224
resnet5079.038 (20.962)94.390 (5.610)25.6bicubic224
mixnet_l78.976 (21.02494.184 (5.816)7.33bicubic224
efficientnet_b178.692 (21.308)94.086 (5.914)7.79bicubic240
efficientnet_es78.066 (21.934)93.926 (6.074)5.44bicubic224
seresnext26t_32x4d77.998 (22.002)93.708 (6.292)16.8bicubic224
seresnext26tn_32x4d77.986 (22.014)93.746 (6.254)16.8bicubic224
efficientnet_b077.698 (22.302)93.532 (6.468)5.29bicubic224
seresnext26d_32x4d77.602 (22.398)93.608 (6.392)16.8bicubic224
mobilenetv2_120d77.294 (22.70693.502 (6.498)5.8bicubic224
mixnet_m77.256 (22.744)93.418 (6.582)5.01bicubic224
resnet34d77.116 (22.884)93.382 (6.618)21.8bicubic224
seresnext26_32x4d77.104 (22.896)93.316 (6.684)16.8bicubic224
skresnet3476.912 (23.088)93.322 (6.678)22.2bicubic224
ese_vovnet19b_dw76.798 (23.202)93.268 (6.732)6.5bicubic224
resnet26d76.68 (23.32)93.166 (6.834)16bicubic224
densenetblur121d76.576 (23.424)93.190 (6.810)8.0bicubic224
mobilenetv2_14076.524 (23.476)92.990 (7.010)6.1bicubic224
mixnet_s75.988 (24.012)92.794 (7.206)4.13bicubic224
mobilenetv3_large_10075.766 (24.234)92.542 (7.458)5.5bicubic224
mobilenetv3_rw75.634 (24.366)92.708 (7.292)5.5bicubic224
mnasnet_a175.448 (24.552)92.604 (7.396)3.89bicubic224
resnet2675.292 (24.708)92.57 (7.43)16bicubic224
fbnetc_10075.124 (24.876)92.386 (7.614)5.6bilinear224
resnet3475.110 (24.890)92.284 (7.716)22bilinear224
mobilenetv2_110d75.052 (24.948)92.180 (7.820)4.5bicubic224
seresnet3474.808 (25.192)92.124 (7.876)22bilinear224
mnasnet_b174.658 (25.342)92.114 (7.886)4.38bicubic224
spnasnet_10074.084 (25.916)91.818 (8.182)4.42bilinear224
skresnet1873.038 (26.962)91.168 (8.832)11.9bicubic224
mobilenetv2_10072.978 (27.022)91.016 (8.984)3.5bicubic224
resnet18d72.260 (27.740)90.696 (9.304)11.7bicubic224
seresnet1871.742 (28.258)90.334 (9.666)11.8bicubic224

Ported and Other Weights

For weights ported from other deep learning frameworks (Tensorflow, MXNet GluonCV) or copied from other PyTorch sources, please see the full results tables for ImageNet and various OOD test sets at in the results tables.

Model code .py files contain links to original sources of models and weights.