thuml/CDAN
Code release for “Conditional Adversarial Domain Adaptation” (NIPS 2018)
repo name | thuml/CDAN |
repo link | https://github.com/thuml/CDAN |
homepage | |
language | Jupyter Notebook |
size (curr.) | 70307 kB |
stars (curr.) | 199 |
created | 2018-08-19 |
license | |
CDAN
Code release for “Conditional Adversarial Domain Adaptation” (NIPS 2018)
Dataset
Digits
Processed SVHN_dataset is here. We change the original mat into images. Other transformed images are in data/svhn2mnist
and data/usps2mnist
. Dataset_train.txt are lists for source and target domains and Dataset_test.txt are lists for test.
Office-31
Office-31 dataset can be found here.
Office-Home
Office-Home dataset can be found here.
VisDA-2017
VisDA 2017 dataset can be found here in the classification track.
Image-clef
We release the Image-clef dataset we used here.
Training
Training instructions for Caffe and PyTorch are in the README.md
in caffe and pytorch respectively.
Tensorflow version is under developing.
Citation
If you use this code for your research, please consider citing:
@inproceedings{long2018conditional,
title={Conditional adversarial domain adaptation},
author={Long, Mingsheng and Cao, Zhangjie and Wang, Jianmin and Jordan, Michael I},
booktitle={Advances in Neural Information Processing Systems},
pages={1645--1655},
year={2018}
}
Contact
If you have any problem about our code, feel free to contact
or describe your problem in Issues.