HyperAI
Home
News
Latest Papers
Tutorials
Datasets
Wiki
SOTA
LLM Models
GPU Leaderboard
Events
Search
About
English
HyperAI
Toggle sidebar
Search the site…
⌘
K
Home
SOTA
Fine-Grained Image Classification
Fine Grained Image Classification On Cub 200
Fine Grained Image Classification On Cub 200
Metrics
Accuracy
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy
Paper Title
Repository
MP-FGVC
91.8%
Delving into Multimodal Prompting for Fine-grained Visual Classification
-
Stacked LSTM
90.4%
Weakly Supervised Complementary Parts Models for Fine-Grained Image Classification from the Bottom Up
GCL
88.3%
Graph-propagation based Correlation Learning for Weakly Supervised Fine-grained Image Classification
-
MGE-CNN
89.4%
Learning a Mixture of Granularity-Specific Experts for Fine-Grained Categorization
DFB
87.4%
Learning a Discriminative Filter Bank within a CNN for Fine-grained Recognition
BCN
89.2%
Fine-Grained Visual Classification with Batch Confusion Norm
-
MHEM (a strong ResNet50 baseline)
88.2%
Penalizing the Hard Example But Not Too Much: A Strong Baseline for Fine-Grained Visual Classification
Mix+
90.2%
Attribute Mix: Semantic Data Augmentation for Fine Grained Recognition
TransIFC
91.0%
TransIFC: Invariant Cues-aware Feature Concentration Learning for Efficient Fine-grained Bird Image Classification
-
CAP
91.8%
Context-aware Attentional Pooling (CAP) for Fine-grained Visual Classification
Correspondence with Convolutional Hough Matching Networks
83.27
Visual correspondence-based explanations improve AI robustness and human-AI team accuracy
SnapMix
89.58%
SnapMix: Semantically Proportional Mixing for Augmenting Fine-grained Data
SIM-Trans
91.8%
SIM-Trans: Structure Information Modeling Transformer for Fine-grained Visual Categorization
API-Net
90.0%
Learning Attentive Pairwise Interaction for Fine-Grained Classification
TransFG
91.7%
TransFG: A Transformer Architecture for Fine-grained Recognition
Correspondence with Earth mover's distance
84.98
Visual correspondence-based explanations improve AI robustness and human-AI team accuracy
SEF
87.3%
Learning Semantically Enhanced Feature for Fine-Grained Image Classification
CIN
88.3%
Channel Interaction Networks for Fine-Grained Image Categorization
-
DF-GMM
88.8%
Weakly Supervised Fine-Grained Image Classification via Guassian Mixture Model Oriented Discriminative Learning
-
GAT
88.66%
Human Attention in Fine-grained Classification
0 of 73 row(s) selected.
Previous
Next