Few Shot Image Classification
Few-Shot Image Classification is a computer vision task aimed at training machine learning models to classify new images using only a few labeled samples (typically fewer than 6). The goal of this task is to enable the model to quickly recognize and classify new categories with minimal supervision and data requirements, thereby enhancing its generalization capability under conditions of limited data. This technology holds significant practical value, especially in scenarios where data acquisition is challenging or expensive.
TAFE-Net
Synthesised Classifier
Human (Amateur)
MergedNet-Concat
PRE
pseudo-shots
PT+MAP+SF+SOT (transductive)
PT+MAP+SF+SOT (transductive)
pseudo-shots
TAFE-Net
MATANet
Word CNN-RNN (DS-SJE Embedding)
MATANet
PT+MAP+SF+SOT (transductive)
PT+MAP+SF+BPA (transductive)
EASY 3xResNet12 (transductive)
Prototypical Networks
alpha-TIM
alpha-TIM
alpha-TIM
R2-D2+Task Aug
MTL
pseudo-shots
pseudo-shots
Word CNN-RNN (DS-SJE Embedding)
DebiasPL (ResNet50)
ViT-MoE-15B (Every-2)
MAWS (ViT-6.5B)
ViT-MoE-15B (Every-2)
KGTN-ens (ResNet-50, h+g, max)
KGTN (ResNet-50)
LaplacianShot
SMAT (DINO-VIT-Base-16-224)
URT
PT+MAP
TIM-GD
Transductive CNAPS + FETI
Transductive CNAPS + FETI
PT+MAP+SF+BPA (transductive)
CAML [Laion-2b]
PT+MAP
PT+MAP
TRIDENT
TIM-GD
TIM-GD
GCR
LaplacianShot
LaplacianShot
HyperShot
GCR
MC2+
APL
APL
MC2+
DCN6-E
APL
ProtoNetsVideo
SimpleCNAPs + LITE
RS-FSL
MML(KL)
MATANet
MATANet
Synthesised Classifier
PT+MAP
CAML [Laion-2b]
Transductive CNAPS + FETI
Transductive CNAPS + FETI