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Fine-Grained Image Classification
Fine Grained Image Classification On Oxford
Fine Grained Image Classification On Oxford
Metrics
Accuracy
FLOPS
PARAMS
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy
FLOPS
PARAMS
Paper Title
Repository
ResNet50 (A1)
97.9%
4.1
24M
ResNet strikes back: An improved training procedure in timm
Grafit (RegNet-8GF)
99.1%
-
-
Grafit: Learning fine-grained image representations with coarse labels
-
AutoFormer-S | 384
-
-
-
AutoFormer: Searching Transformers for Visual Recognition
Wide-ResNet-101 (Spinal FC)
99.30%
-
-
SpinalNet: Deep Neural Network with Gradual Input
DenseNet-201
98.29
-
-
A Comprehensive Study on Torchvision Pre-trained Models for Fine-grained Inter-species Classification
-
PC Bilinear CNN
93.65%
-
-
Pairwise Confusion for Fine-Grained Visual Classification
ResMLP-12
97.4%
-
-
ResMLP: Feedforward networks for image classification with data-efficient training
NAT-M3
98.1
250M
3.7M
Neural Architecture Transfer
µ2Net (ViT-L/16)
99.61%
-
-
An Evolutionary Approach to Dynamic Introduction of Tasks in Large-scale Multitask Learning Systems
TNT-B
99.0%
-
65.6M
Transformer in Transformer
DenseNet-201(Spinal FC)
98.36
-
-
A Comprehensive Study on Torchvision Pre-trained Models for Fine-grained Inter-species Classification
-
NAT-M1
-
152M
3.3M
Neural Architecture Transfer
BiT-M (ResNet)
99.30%
-
-
Big Transfer (BiT): General Visual Representation Learning
ResMLP-24
97.9%
-
-
ResMLP: Feedforward networks for image classification with data-efficient training
CCT-14/7x2
-
15G
22.5M
Escaping the Big Data Paradigm with Compact Transformers
AutoAugment
95.36%
-
-
AutoAugment: Learning Augmentation Policies from Data
IELT
99.64%
-
-
Fine-Grained Visual Classification via Internal Ensemble Learning Transformer
NAT-M2
97.9
195M
3.4M
Neural Architecture Transfer
FixInceptionResNet-V2
95.7%
-
-
Fixing the train-test resolution discrepancy
Assemble-ResNet
98.9%
-
-
Compounding the Performance Improvements of Assembled Techniques in a Convolutional Neural Network
0 of 25 row(s) selected.
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