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SOTA
Multi-Label Classification
Multi Label Classification On Pascal Voc 2007
Multi Label Classification On Pascal Voc 2007
Metrics
mAP
Results
Performance results of various models on this benchmark
Columns
Model Name
mAP
Paper Title
Q2L-CvT(ImageNet-21K pretrained, resolution 384)
97.3
Query2Label: A Simple Transformer Way to Multi-Label Classification
Q2L-TResL(ImageNet-21K pretrained, resolution 448)
96.9
Query2Label: A Simple Transformer Way to Multi-Label Classification
GKGNet
96.8
GKGNet: Group K-Nearest Neighbor based Graph Convolutional Network for Multi-Label Image Recognition
MLD-TResNetL-AAM (resolution 448, pretrain from OpenImages V6)
96.70
Combining Metric Learning and Attention Heads For Accurate and Efficient Multilabel Image Classification
M3TR(448×448)
96.5
M3TR: Multi-modal Multi-label Recognition with Transformer
Q2L-TResL(resolution 448)
96.1
Query2Label: A Simple Transformer Way to Multi-Label Classification
MSRN(pretrain from MS-COCO)
96.0
Multi-layered Semantic Representation Network for Multi-label Image Classification
TResNet-L (resolution 448, pretrain from MS-COCO)
95.8
Asymmetric Loss For Multi-Label Classification
TDRG-R101(448×448)
95.0
Transformer-based Dual Relation Graph for Multi-label Image Recognition
SSGRL (pretrain from MS-COCO)
95.0
Learning Semantic-Specific Graph Representation for Multi-Label Image Recognition
MCAR (ResNet101, 448x448)
94.8
Learning to Discover Multi-Class Attentional Regions for Multi-Label Image Recognition
TResNet-L (resolution 448, pretrain from ImageNet)
94.6
Asymmetric Loss For Multi-Label Classification
ML-GCN (pretrain from ImageNet)
94.0
Multi-Label Image Recognition with Graph Convolutional Networks
SSGRL (pretrain from ImageNet)
93.4
Learning Semantic-Specific Graph Representation for Multi-Label Image Recognition
Ours PF-DLDL
93.4
Deep Label Distribution Learning with Label Ambiguity
ViT-B-16 (ImageNet-21K pretrained)
93.1
ImageNet-21K Pretraining for the Masses
FeV+LV (pretrain from ImageNet)
92.0
Exploit Bounding Box Annotations for Multi-label Object Recognition
0 of 17 row(s) selected.
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Multi Label Classification On Pascal Voc 2007 | SOTA | HyperAI