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 326350 of 353 papers

TitleStatusHype
Learning to Propagate Labels: Transductive Propagation Network for Few-shot LearningCode0
Meta-Learning Probabilistic Inference For PredictionCode0
TADAM: Task dependent adaptive metric for improved few-shot learningCode0
Hyperspectral image classification via a random patches networkCode0
Unsupervised Learning using Pretrained CNN and Associative Memory Bank0
Dynamic Few-Shot Visual Learning without ForgettingCode1
Low-Shot Learning for the Semantic Segmentation of Remote Sensing ImageryCode0
On First-Order Meta-Learning AlgorithmsCode1
Gradient-Based Meta-Learning with Learned Layerwise Metric and SubspaceCode0
Transfer Learning on Manifolds via Learned Transport Operators0
Rapid Adaptation with Conditionally Shifted Neurons0
Learning to Compare: Relation Network for Few-Shot LearningCode1
A Simple Neural Attentive Meta-LearnerCode0
Few-Shot Image Recognition by Predicting Parameters from ActivationsCode0
Low-shot learning with large-scale diffusionCode0
Discriminative k-shot learning using probabilistic models0
Prototypical Networks for Few-shot LearningCode2
Learning to Remember Rare EventsCode0
Model-Agnostic Meta-Learning for Fast Adaptation of Deep NetworksCode1
Spectral–Spatial Classification of Hyperspectral Imagery with 3D Convolutional Neural NetworkCode0
Learning Deep Parsimonious RepresentationsCode0
Matching Networks for One Shot LearningCode1
Low-shot Visual Recognition by Shrinking and Hallucinating FeaturesCode0
Towards a Neural StatisticianCode0
Deep supervised learning for hyperspectral data classification through convolutional neural networksCode0
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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