Unsupervised Domain Adaptation
Unsupervised domain adaptation is a learning framework aimed at transferring knowledge learned from a large number of labeled training samples in the source domain to the target domain, which only has unlabeled data. This method improves the model's generalization ability in new environments by reducing the distribution discrepancy between the source and target domains, making it highly valuable for various applications.
SpCL
ALDI++ (ResNet50-FPN)
ILLUME
Uncertainty + Adaboost
SAMB
CLUDA+HRDA
CLUDA+HRDA
EfficientNet-L2 NoisyStudent + RPL
EfficientNet-L2+RPL
TranSVAE
ViSGA
CCTSE
CORE-ReID
SGADA
Implicit Alignment (with MDD)
PMTrans
Implicit Alignment (with MDD)
UGT
CoVi
ILLUME
Gradual Self-Training (Small Conv)
PointDAN
CDN
ALDI++ (ResNet50-FPN, 1024px)
MIC+CSI
DA-RetinaNet
CoReg
TransAdapter
TransAdapter