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 276300 of 353 papers

TitleStatusHype
Unsupervised Image Classification for Deep Representation LearningCode0
Adversarially Robust Few-Shot Learning: A Meta-Learning ApproachCode0
Towards a Neural StatisticianCode0
Cooperative Meta-Learning with Gradient AugmentationCode0
Contextualizing Meta-Learning via Learning to DecomposeCode0
Gradient-Based Meta-Learning with Learned Layerwise Metric and SubspaceCode0
Few-Shot Learning with Global Class RepresentationsCode0
Complementing Representation Deficiency in Few-shot Image Classification: A Meta-Learning ApproachCode0
Few-Shot Learning for Image Classification of Common FloraCode0
Self-Supervised Learning For Few-Shot Image ClassificationCode0
Comparing the Efficacy of Fine-Tuning and Meta-Learning for Few-Shot Policy ImitationCode0
CMVAE: Causal Meta VAE for Unsupervised Meta-LearningCode0
Few-Shot Image Recognition by Predicting Parameters from ActivationsCode0
Image Deformation Meta-Networks for One-Shot LearningCode0
Few and Fewer: Learning Better from Few Examples Using Fewer Base ClassesCode0
Clustered Task-Aware Meta-Learning by Learning from Learning PathsCode0
Graph-based Interpolation of Feature Vectors for Accurate Few-Shot ClassificationCode0
SgVA-CLIP: Semantic-guided Visual Adapting of Vision-Language Models for Few-shot Image ClassificationCode0
Evaluation of Output Embeddings for Fine-Grained Image ClassificationCode0
Associative Alignment for Few-shot Image ClassificationCode0
Sign-MAML: Efficient Model-Agnostic Meta-Learning by SignSGDCode0
Meta-Learning Probabilistic Inference For PredictionCode0
Meta-Learning without MemorizationCode0
Edge-labeling Graph Neural Network for Few-shot LearningCode0
Meta-Learning Initializations for Image SegmentationCode0
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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