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Fine-Grained Image Classification
Fine Grained Image Classification On Fgvc
Fine Grained Image Classification On Fgvc
Metrics
Accuracy
FLOPS
PARAMS
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy
FLOPS
PARAMS
Paper Title
Repository
NAT-M2
89.0%
235M
3.4M
Neural Architecture Transfer
WS-DAN
93.0%
-
-
See Better Before Looking Closer: Weakly Supervised Data Augmentation Network for Fine-Grained Visual Classification
PCA
92.8%
-
-
Progressive Co-Attention Network for Fine-grained Visual Classification
PMG
93.4%
-
-
Fine-Grained Visual Classification via Progressive Multi-Granularity Training of Jigsaw Patches
Assemble-ResNet-FGVC-50
92.4
-
-
Compounding the Performance Improvements of Assembled Techniques in a Convolutional Neural Network
NAT-M3
90.1%
388M
5.1M
Neural Architecture Transfer
CAL
94.2
-
-
Counterfactual Attention Learning for Fine-Grained Visual Categorization and Re-identification
BCN
93.5%
-
-
Fine-Grained Visual Classification with Batch Confusion Norm
-
DenseNet161+MM+FRL
94.0 %
-
-
Learning Class Unique Features in Fine-Grained Visual Classification
-
ACNet
92.4%
-
-
Attention Convolutional Binary Neural Tree for Fine-Grained Visual Categorization
Inceptionv4
95.11
-
-
Non-binary deep transfer learning for image classification
MC Loss (B-CNN)
92.9%
-
-
The Devil is in the Channels: Mutual-Channel Loss for Fine-Grained Image Classification
DFB-CNN
92.0%
-
-
Learning a Discriminative Filter Bank within a CNN for Fine-grained Recognition
Mix+
93.1%
-
-
Attribute Mix: Semantic Data Augmentation for Fine Grained Recognition
DCAL
93.3%
-
-
Dual Cross-Attention Learning for Fine-Grained Visual Categorization and Object Re-Identification
-
CSQA-Net
94.7%
-
-
Context-Semantic Quality Awareness Network for Fine-Grained Visual Categorization
-
SR-GNN
95.4
9.8
30.9
SR-GNN: Spatial Relation-aware Graph Neural Network for Fine-Grained Image Categorization
NNCLR
64.1
-
-
With a Little Help from My Friends: Nearest-Neighbor Contrastive Learning of Visual Representations
ELoPE
93.5%
-
-
ELoPE: Fine-Grained Visual Classification with Efficient Localization, Pooling and Embedding
CAP
94.9%
-
34.2
Context-aware Attentional Pooling (CAP) for Fine-grained Visual Classification
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