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ImageNet-C
Domain Generalization on ImageNet-C
Metric: Top 1 Accuracy (higher is better)
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Model name (A→Z)
#
Model
↕
Top 1 Accuracy
▼
Extra Data
Paper
Date
↕
Code
1
FAN-L-Hybrid (IN-22k)
73.6
Yes
Understanding The Robustness in Vision Transform...
2022-04-26
Code
2
FAN-B-Hybrid (IN-22k)
70.5
Yes
Understanding The Robustness in Vision Transform...
2022-04-26
Code
3
ResNet-50 (PushPull-Conv) + PRIME
69.4
No
PushPull-Net: Inhibition-driven ResNet robust to...
2024-08-07
Code
4
FAN-L-Hybrid+STL
69.2
No
Fully Attentional Networks with Self-emerging To...
2024-01-08
Code
5
FAN-L-Hybrid
67.7
No
Understanding The Robustness in Vision Transform...
2022-04-26
Code
6
DiffAUD (ConvNeXt-Tiny)
64.3
Yes
-
-
Code
7
DiffAUD (Swin-Tiny)
61
Yes
-
-
Code
8
PRIME + DeepAugment (ResNet-50)
59.9
No
PRIME: A few primitives can boost robustness to ...
2021-12-27
Code
9
ViT-B/16-SAM
56.5
No
When Vision Transformers Outperform ResNets with...
2021-06-03
Code
10
PRIME with JSD (ResNet-50)
56.4
No
PRIME: A few primitives can boost robustness to ...
2021-12-27
Code
11
PRIME (ResNet-50)
55
No
PRIME: A few primitives can boost robustness to ...
2021-12-27
Code
12
ResNet-152x2-SAM
55
No
When Vision Transformers Outperform ResNets with...
2021-06-03
Code
13
DiffAUD (ResNet-50)
52.1
Yes
-
-
Code
14
Mixer-B/8-SAM
48.9
No
When Vision Transformers Outperform ResNets with...
2021-06-03
Code
#1
FAN-L-Hybrid (IN-22k)
SOTA
73.6
Top 1 Accuracy
· Extra Data
· 2022-04-26
Understanding The Robustness in Vision Transformers
Code
#2
FAN-B-Hybrid (IN-22k)
70.5
Top 1 Accuracy
· Extra Data
· 2022-04-26
Understanding The Robustness in Vision Transformers
Code
#3
ResNet-50 (PushPull-Conv) + PRIME
69.4
Top 1 Accuracy
· 2024-08-07
PushPull-Net: Inhibition-driven ResNet robust to image corruptions
Code
#4
FAN-L-Hybrid+STL
69.2
Top 1 Accuracy
· 2024-01-08
Fully Attentional Networks with Self-emerging Token Labeling
Code
#5
FAN-L-Hybrid
67.7
Top 1 Accuracy
· 2022-04-26
Understanding The Robustness in Vision Transformers
Code
#6
DiffAUD (ConvNeXt-Tiny)
64.3
Top 1 Accuracy
· Extra Data
No paper
Code
#7
DiffAUD (Swin-Tiny)
61
Top 1 Accuracy
· Extra Data
No paper
Code
#8
PRIME + DeepAugment (ResNet-50)
SOTA
59.9
Top 1 Accuracy
· 2021-12-27
PRIME: A few primitives can boost robustness to common corruptions
Code
#9
ViT-B/16-SAM
SOTA
56.5
Top 1 Accuracy
· 2021-06-03
When Vision Transformers Outperform ResNets without Pre-training or Strong Data Augmentations
Code
#10
PRIME with JSD (ResNet-50)
56.4
Top 1 Accuracy
· 2021-12-27
PRIME: A few primitives can boost robustness to common corruptions
Code
#11
PRIME (ResNet-50)
55
Top 1 Accuracy
· 2021-12-27
PRIME: A few primitives can boost robustness to common corruptions
Code
#12
ResNet-152x2-SAM
55
Top 1 Accuracy
· 2021-06-03
When Vision Transformers Outperform ResNets without Pre-training or Strong Data Augmentations
Code
#13
DiffAUD (ResNet-50)
52.1
Top 1 Accuracy
· Extra Data
No paper
Code
#14
Mixer-B/8-SAM
48.9
Top 1 Accuracy
· 2021-06-03
When Vision Transformers Outperform ResNets without Pre-training or Strong Data Augmentations
Code