HyperAI超神经

Fine Grained Image Classification On Cub 200

评估指标

Accuracy

评测结果

各个模型在此基准测试上的表现结果

模型名称
Accuracy
Paper TitleRepository
MP-FGVC91.8%Delving into Multimodal Prompting for Fine-grained Visual Classification-
Stacked LSTM90.4%Weakly Supervised Complementary Parts Models for Fine-Grained Image Classification from the Bottom Up
GCL88.3%Graph-propagation based Correlation Learning for Weakly Supervised Fine-grained Image Classification-
MGE-CNN89.4%Learning a Mixture of Granularity-Specific Experts for Fine-Grained Categorization
DFB87.4%Learning a Discriminative Filter Bank within a CNN for Fine-grained Recognition
BCN89.2%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
TransIFC91.0%TransIFC: Invariant Cues-aware Feature Concentration Learning for Efficient Fine-grained Bird Image Classification-
CAP91.8%Context-aware Attentional Pooling (CAP) for Fine-grained Visual Classification
Correspondence with Convolutional Hough Matching Networks83.27Visual correspondence-based explanations improve AI robustness and human-AI team accuracy
SnapMix89.58%SnapMix: Semantically Proportional Mixing for Augmenting Fine-grained Data
SIM-Trans91.8%SIM-Trans: Structure Information Modeling Transformer for Fine-grained Visual Categorization
API-Net90.0%Learning Attentive Pairwise Interaction for Fine-Grained Classification
TransFG91.7%TransFG: A Transformer Architecture for Fine-grained Recognition
Correspondence with Earth mover's distance84.98Visual correspondence-based explanations improve AI robustness and human-AI team accuracy
SEF87.3%Learning Semantically Enhanced Feature for Fine-Grained Image Classification
CIN88.3%Channel Interaction Networks for Fine-Grained Image Categorization-
DF-GMM88.8%Weakly Supervised Fine-Grained Image Classification via Guassian Mixture Model Oriented Discriminative Learning-
GAT88.66%Human Attention in Fine-grained Classification
0 of 73 row(s) selected.