Awesome
FACT
This repo provides a demo for the CVPR 2021 paper "A Fourier-based Framework for Domain Generalization" on the PACS dataset.
To cite, please use:
@InProceedings{Xu_2021_CVPR,
author = {Xu, Qinwei and Zhang, Ruipeng and Zhang, Ya and Wang, Yanfeng and Tian, Qi},
title = {A Fourier-Based Framework for Domain Generalization},
booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2021},
pages = {14383-14392}
}
Requirements
Python 3.6
Pytorch 1.1.0
Evaluation
Firstly create directory ckpt/
and drag your model under it. For running the evaluation code, please download the PACS dataset from http://www.eecs.qmul.ac.uk/~dl307/project_iccv2017. Then update the files with suffix _test.txt
in data/datalists
for each domain, following styles below:
/home/user/data/images/PACS/kfold/art_painting/dog/pic_001.jpg 0
/home/user/data/images/PACS/kfold/art_painting/dog/pic_002.jpg 0
/home/user/data/images/PACS/kfold/art_painting/dog/pic_003.jpg 0
...
Once the data is prepared, remember to update the path of test files and output logs in shell_test.py
:
input_dir = 'path/to/test/files'
output_dir = 'path/to/output/logs'
then simply run:
python shell_test.py -d=art_painting
You can use the argument -d
to specify the held-out target domain.
Training from scratch
After downloading the dataset, update the files with suffix _train.txt
and _val.txt
in data/datalists
for each domain, following the same styles as the test files above. Please make sure you are using the official train-val-split. Then update the the path of train&val files and output logs in shell_train.py
:
input_dir = 'path/to/train/files'
output_dir = 'path/to/output/logs'
Then running the code:
python shell_train.py -d=art_painting
Use the argument -d
to specify the held-out target domain.
Acknowledgement
Part of our code is borrowed from the following repositories.
- JigenDG: "Domain Generalization by Solving Jigsaw Puzzles", CVPR 2019
- DDAIG: "Deep Domain-Adversarial Image Generation for Domain Generalisation", AAAI 2020
We thank to the authors for releasing their codes. Please also consider citing their works.