SOTAVerified

Few-Shot Image Classification

Few-Shot Image Classification is a computer vision task that involves training machine learning models to classify images into predefined categories using only a few labeled examples of each category (typically ( Image credit: Learning Embedding Adaptation for Few-Shot Learning )

Papers

Showing 251275 of 353 papers

TitleStatusHype
Multi-level Metric Learning for Few-shot Image RecognitionCode0
Hierarchical Representation based Query-Specific Prototypical Network for Few-Shot Image Classification0
How to distribute data across tasks for meta-learning?0
Model-Agnostic Graph Regularization for Few-Shot Learning0
Few-shot Image Classification with Multi-Facet Prototypes0
CORL: Compositional Representation Learning for Few-Shot Classification0
Machine learning with limited data0
Optimal allocation of data across training tasks in meta-learning0
Revisiting Unsupervised Meta-Learning via the Characteristics of Few-Shot TasksCode0
Multi-scale Adaptive Task Attention Network for Few-Shot Learning0
Confusable Learning for Large-class Few-Shot Classification0
How Does the Task Landscape Affect MAML Performance?0
Uncertainty-Aware Few-Shot Image Classification0
Variational Feature Disentangling for Fine-Grained Few-Shot Classification0
Robust High-dimensional Memory-augmented Neural Networks0
Improving Few-Shot Visual Classification with Unlabelled Examples0
Yet Meta Learning Can Adapt Fast, It Can Also Break Easily0
Select-ProtoNet: Learning to Select for Few-Shot Disease Subtype Prediction0
Few-Shot Image Classification via Contrastive Self-Supervised Learning0
Complementing Representation Deficiency in Few-shot Image Classification: A Meta-Learning ApproachCode0
Impact of base dataset design on few-shot image classification0
Layer-Wise Adaptive Updating for Few-Shot Image Classification0
Gradient-EM Bayesian Meta-learning0
Unsupervised Image Classification for Deep Representation LearningCode0
Enhancing Few-Shot Image Classification with Unlabelled Examples0
Show:102550
← PrevPage 11 of 15Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SgVA-CLIPAccuracy97.95Unverified
2CAML [Laion-2b]Accuracy96.2Unverified
3P>M>F (P=DINO-ViT-base, M=ProtoNet)Accuracy95.3Unverified
4TRIDENTAccuracy86.11Unverified
5PT+MAP+SF+SOT (transductive)Accuracy85.59Unverified
6PT+MAP+SF+BPA (transductive)Accuracy85.59Unverified
7PEMnE-BMS* (transductive)Accuracy85.54Unverified
8PT+MAP (s+f) (transductive)Accuracy84.81Unverified
9BAVARDAGEAccuracy84.8Unverified
10EASY 3xResNet12 (transductive)Accuracy84.04Unverified
#ModelMetricClaimedVerifiedStatus
1SgVA-CLIPAccuracy98.72Unverified
2CAML [Laion-2b]Accuracy98.6Unverified
3P>M>F (P=DINO-ViT-base, M=ProtoNet)Accuracy98.4Unverified
4TRIDENTAccuracy95.95Unverified
5BAVARDAGEAccuracy91.65Unverified
6PEMnE-BMS*(transductive)Accuracy91.53Unverified
7Transductive CNAPS + FETIAccuracy91.5Unverified
8PT+MAP+SF+BPA (transductive)Accuracy91.34Unverified
9PT+MAP+SF+SOT (transductive)Accuracy91.34Unverified
10AmdimNetAccuracy90.98Unverified