SOTAVerified

Multi-label Image Recognition with Partial Labels

Multi-label image recognition with partial labels (MLR-PL), in which some labels are known while others are unknown for each multi-label image, aims to train MLR models with partial labels to reduce the annotation cost. Since existing MLR datasets have complete labels, current works propose to randomly drop a certain proportion of positive and negative labels to create partially annotated datasets, and report the results on the known labels proportion of 10% to 90%.

Papers

Showing 111 of 11 papers

TitleStatusHype
Saliency Regularization for Self-Training with Partial Annotations0
Texts as Images in Prompt Tuning for Multi-Label Image RecognitionCode1
DualCoOp: Fast Adaptation to Multi-Label Recognition with Limited AnnotationsCode1
Dual-Perspective Semantic-Aware Representation Blending for Multi-Label Image Recognition with Partial LabelsCode1
Heterogeneous Semantic Transfer for Multi-label Recognition with Partial LabelsCode1
Semantic-Aware Representation Blending for Multi-Label Image Recognition with Partial LabelsCode1
Structured Semantic Transfer for Multi-Label Recognition with Partial LabelsCode1
Learning Graph Convolutional Networks for Multi-Label Recognition and ApplicationsCode0
Knowledge-Guided Multi-Label Few-Shot Learning for General Image Recognition0
Learning Semantic-Specific Graph Representation for Multi-Label Image RecognitionCode1
Learning a Deep ConvNet for Multi-label Classification with Partial Labels0
Show:102550

No leaderboard results yet.