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SOTA
소수 샷 이미지 분류
Few Shot Image Classification On Meta Dataset
Few Shot Image Classification On Meta Dataset
평가 지표
Accuracy
평가 결과
이 벤치마크에서 각 모델의 성능 결과
Columns
모델 이름
Accuracy
Paper Title
Repository
SMAT (DINO-VIT-Base-16-224)
85.27
Unleashing the Power of Meta-tuning for Few-shot Generalization Through Sparse Interpolated Experts
P>M>F (P=DINO-ViT-base, M=ProtoNet)
84.75
Pushing the Limits of Simple Pipelines for Few-Shot Learning: External Data and Fine-Tuning Make a Difference
TSP (ResNet18; applied on TA^2-Net)
81.40
Task-Specific Preconditioner for Cross-Domain Few-Shot Learning
-
TSA (ResNet18, URL, residual adapters, 84x84 image, shuffled data, scratch, MDL)
78.07
Cross-domain Few-shot Learning with Task-specific Adapters
UpperCaSE-EfficientNetB0
76.1
Contextual Squeeze-and-Excitation for Efficient Few-Shot Image Classification
URL (ResNet18, 84x84 image, shuffled data, scratch, MDL)
75.75
Universal Representation Learning from Multiple Domains for Few-shot Classification
UpperCaSE-ResNet50
74.9
Contextual Squeeze-and-Excitation for Efficient Few-Shot Image Classification
URT+MQDA
74.3
Shallow Bayesian Meta Learning for Real-World Few-Shot Recognition
URT
72.15
A Universal Representation Transformer Layer for Few-Shot Image Classification
SUR
70.72
Selecting Relevant Features from a Multi-domain Representation for Few-shot Classification
Transductive CNAPS
70.32
Enhancing Few-Shot Image Classification with Unlabelled Examples
Simple CNAPS
69.86
Improved Few-Shot Visual Classification
SUR-pnf
69.3
Selecting Relevant Features from a Multi-domain Representation for Few-shot Classification
Invariance-Equivariance
68.89
Exploring Complementary Strengths of Invariant and Equivariant Representations for Few-Shot Learning
CNAPs
66.9
Fast and Flexible Multi-Task Classification Using Conditional Neural Adaptive Processes
fo-Proto-MAML
63.428
Meta-Dataset: A Dataset of Datasets for Learning to Learn from Few Examples
Prototypical Networks
60.573
Prototypical Networks for Few-shot Learning
Finetune
58.758
Meta-Dataset: A Dataset of Datasets for Learning to Learn from Few Examples
fo-MAML
57.024
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks
Matching Networks
56.247
Matching Networks for One Shot Learning
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