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99ab1b12
编写于
5月 26, 2019
作者:
R
Ross Wightman
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5月 26, 2019
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@@ -127,29 +127,29 @@ I've leveraged the training scripts in this repository to train a few of the mod
#### @ 224x224
| Model | Prec@1 (Err) | Prec@5 (Err) | Param # | Image Scaling | Source |
|---|---|---|---|---|---|
| senet154 | 81.224 (18.776) | 95.356 (4.644) | 115.09 | bicubic | |
| resnet152_v1s | 81.012 (18.988) | 95.416 (4.584) | 60.32 | bicubic | |
| seresnext101_32x4d | 80.902 (19.098) | 95.294 (4.706) | 48.96 | bicubic | |
| seresnext101_64x4d | 80.890 (19.110) | 95.304 (4.696) | 88.23 | bicubic | |
| resnext101_64x4d | 80.602 (19.398) | 94.994 (5.006) | 83.46 | bicubic | |
| resnet152_v1d | 80.470 (19.530) | 95.206 (4.794) | 60.21 | bicubic | |
| resnet101_v1d | 80.424 (19.576) | 95.020 (4.980) | 44.57 | bicubic | |
| resnext101_32x4d | 80.334 (19.666) | 94.926 (5.074) | 44.18 | bicubic | |
| resnet101_v1s | 80.300 (19.700) | 95.150 (4.850) | 44.67 | bicubic | |
| resnet152_v1c | 79.916 (20.084) | 94.842 (5.158) | 60.21 | bicubic | |
| seresnext50_32x4d | 79.912 (20.088) | 94.818 (5.182) | 27.56 | bicubic | |
| resnet152_v1b | 79.692 (20.308) | 94.738 (5.262) | 60.19 | bicubic | |
| resnet101_v1c | 79.544 (20.456) | 94.586 (5.414) | 44.57 | bicubic | |
| resnext50_32x4d | 79.356 (20.644) | 94.424 (5.576) | 25.03 | bicubic | |
| resnet101_v1b | 79.304 (20.696) | 94.524 (5.476) | 44.55 | bicubic | |
| resnet50_v1d | 79.074 (20.926) | 94.476 (5.524) | 25.58 | bicubic | |
| resnet50_v1s | 78.712 (21.288) | 94.242 (5.758) | 25.68 | bicubic | |
| resnet50_v1c | 78.010 (21.990) | 93.988 (6.012) | 25.58 | bicubic | |
| resnet50_v1b | 77.578 (22.422) | 93.718 (6.282) | 25.56 | bicubic | |
| resnet34_v1b | 74.580 (25.420) | 91.988 (8.012) | 21.80 | bicubic | |
|
gluon_
senet154 | 81.224 (18.776) | 95.356 (4.644) | 115.09 | bicubic | |
|
gluon_
resnet152_v1s | 81.012 (18.988) | 95.416 (4.584) | 60.32 | bicubic | |
|
gluon_
seresnext101_32x4d | 80.902 (19.098) | 95.294 (4.706) | 48.96 | bicubic | |
|
gluon_
seresnext101_64x4d | 80.890 (19.110) | 95.304 (4.696) | 88.23 | bicubic | |
|
gluon_
resnext101_64x4d | 80.602 (19.398) | 94.994 (5.006) | 83.46 | bicubic | |
|
gluon_
resnet152_v1d | 80.470 (19.530) | 95.206 (4.794) | 60.21 | bicubic | |
|
gluon_
resnet101_v1d | 80.424 (19.576) | 95.020 (4.980) | 44.57 | bicubic | |
|
gluon_
resnext101_32x4d | 80.334 (19.666) | 94.926 (5.074) | 44.18 | bicubic | |
|
gluon_
resnet101_v1s | 80.300 (19.700) | 95.150 (4.850) | 44.67 | bicubic | |
|
gluon_
resnet152_v1c | 79.916 (20.084) | 94.842 (5.158) | 60.21 | bicubic | |
|
gluon_
seresnext50_32x4d | 79.912 (20.088) | 94.818 (5.182) | 27.56 | bicubic | |
|
gluon_
resnet152_v1b | 79.692 (20.308) | 94.738 (5.262) | 60.19 | bicubic | |
|
gluon_
resnet101_v1c | 79.544 (20.456) | 94.586 (5.414) | 44.57 | bicubic | |
|
gluon_
resnext50_32x4d | 79.356 (20.644) | 94.424 (5.576) | 25.03 | bicubic | |
|
gluon_
resnet101_v1b | 79.304 (20.696) | 94.524 (5.476) | 44.55 | bicubic | |
|
gluon_
resnet50_v1d | 79.074 (20.926) | 94.476 (5.524) | 25.58 | bicubic | |
|
gluon_
resnet50_v1s | 78.712 (21.288) | 94.242 (5.758) | 25.68 | bicubic | |
|
gluon_
resnet50_v1c | 78.010 (21.990) | 93.988 (6.012) | 25.58 | bicubic | |
|
gluon_
resnet50_v1b | 77.578 (22.422) | 93.718 (6.282) | 25.56 | bicubic | |
|
gluon_
resnet34_v1b | 74.580 (25.420) | 91.988 (8.012) | 21.80 | bicubic | |
| SE-MNASNet 1.00 (A1) | 73.086 (26.914) | 91.336 (8.664) | 3.87 | bicubic |
[
Google TFLite
](
https://github.com/tensorflow/tpu/tree/master/models/official/mnasnet
)
|
| MNASNet 1.00 (B1) | 72.398 (27.602) | 90.930 (9.070) | 4.36 | bicubic |
[
Google TFLite
](
https://github.com/tensorflow/tpu/tree/master/models/official/mnasnet
)
| resnet18_v1b | 70.830 (29.170) | 89.756 (10.244) | 11.69 | bicubic | |
|
gluon_
resnet18_v1b | 70.830 (29.170) | 89.756 (10.244) | 11.69 | bicubic | |
#### @ 299x299
| Model | Prec@1 (Err) | Prec@5 (Err) | Param # | Image Scaling | Source |
...
...
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