Awesome
Improving Semi Supervised Domain Adaptation using Target Selection and Semantics
Install
conda env create -n SSDA.yml
The code is written for Pytorch 0.4.0, but should work for other version with some modifications.
Data preparation (DomainNet)
Download the cleaned version of the domainnet data from here and place them inside the './data/multi/' folder.
The images will be stored in the following way.
./data/multi/real/category_name
,
./data/multi/sketch/category_name
The dataset split files are stored as follows,
./data/txt/multi/labeled_source_images_real.txt
,
./data/txt/multi/unlabeled_target_images_sketch_3.txt
,
With regard to office and office home dataset, store the image files in the following ways,
./data/office/amazon/category_name
,
./data/office_home/Real/category_name
,
We provide the split of office and office-home.
Training
To run training using alexnet,
sh run_train.sh gpu_id method alexnet
where, gpu_id = 0,1,2,3...., method=[MME,ENT,S+T].