Domain Adaptation
Domain adaptation refers to the task of adjusting models between different data distributions. Its core objective is to enable machine learning models to generalize to the target domain and effectively handle distribution differences between the source and target domains, thereby enhancing the model's performance and robustness in new environments. This technique has significant value in cross-domain data applications and can be widely used in image recognition, natural language processing, and other fields.
Office-31
PMTrans
SYNTHIA-to-Cityscapes
HALO
Office-Home
SWG
VisDA2017
DePT
GTA5 to Cityscapes
ProDA
ImageCLEF-DA
SPL
Cityscapes to ACDC
Refign (DAFormer)
MNIST-to-USPS
DFA-MCD
SVHN-to-MNIST
Mean teacher
USPS-to-MNIST
SVNH-to-MNIST
SRDA (RAN)
MoLane
MuLane
UFLD-SGADA-ResNet32
Office-Caltech
SPL
TuLane
Cityscapes-to-FoggyZurich
BWG
GTAV+Synscapes to Cityscapes
DDB
SYNSIG-to-GTSRB
DFA-MCD
Cityscapes-to-FoggyDriving
BWG
GTA5+Synscapes to Cityscapes
MRNet
HMDBfull-to-UCF
MNIST-to-MNIST-M
DRANet
Panoptic SYNTHIA-to-Cityscapes
Panoptic SYNTHIA-to-Mapillary
MC-PanDA
UCF --> HMDB (full)
UNITE
UCF-to-HMDBfull
GTAV to Cityscapes+Mapillary
Rein
HMDB --> UCF (full)
TA3N
Synth Digits-to-SVHN
DSN (DANN)
Synth Signs-to-GTSRB
Mean teacher
DomainNet
SFDA2
HMDBsmall-to-UCF
Olympic-to-HMDBsmall
Synscapes-to-Cityscapes
UCF-to-HMDBsmall
UCF-to-Olympic
TemPooling + RevGrad
Rotating MNIST
PCIDA
Canon RAW Low Light
Comic2k
Foggy Cityscapes
GTA-to-FoggyCityscapes
LeukemiaAttri
ConfMix [23] L_100x_C2
MNIST-M-to-MNIST
MSDA
Nikon RAW Low Light
Noisy-Amazon (20%)
Noisy-Amazon (45%)
Noisy-MNIST-to-SYND
Noisy-SYND-to-MNIST
Office-Caltech-10
MEDA
PACS
SSGEN
S2RDA-49
S2RDA-MS-39
PGA
Sim10k
Synth Objects-to-LINEMOD
DSN (DANN)
SYNTHIA-to-FoggyCityscapes
SYNTHIA-to-Cityscapes Labels
MRNet
VIPER-to-Cityscapes