/DFQ

[AAAI2024] DFQ: Learning Generalized Medical Image Segmentation from Decoupled Feature Queries

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DFQ: Learning Generalized Medical Image Segmentation from Decoupled Feature Queries

This is the official implementation of our work entitled DFQ: Learning Generalized Medical Image Segmentation from Decoupled Feature Queries, which has been accepted by AAAI2024.

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An example of training and inference is given below.

Environment Configuration

The basic enviroment dependencies include:

    pip install torchvision==0.8.2
    pip install timm==0.3.2
    pip install mmcv-full==1.2.7
    pip install opencv-python==4.5.1.48

For other minor packages, please refer to the requirements.txt file in this project.

You can directly set up all the enviroment dependencies by

pip install -r requirements.txt

Training on Source Domain

An example of training on DD Fundus benchmark with domain-0 as unseen target domain is given below.

python -W ignore train_feed.py --data_root D:/Med/dataset --dataset fundus --domain_idxs 1,2,3 --test_domain_idx 0 --is_out_domain --consistency --consistency_type kd --encoder b3 --save_path outdir/fundus/target0_pretrain_0.99_b3_feed_iw

Inference on Unseen Target Domains

An example of inference on a pre-trained model is given below.

python -W ignore test_fundus_slice_feed.py --model_file outdir/fundus/target0_pretrain_0.99_b3_feed_iw/model_xx.xx.pth --dataset fundus --data_dir D:/Med/dataset --datasetTest 0 --encoder b3 --test_prediction_save_path results/fundus/target0_pretrain_0.99_b3_feed_iw_xx.xx --save_result

By using this CMD, not only the numerical results but also the visual prediction can be outputted. Here model_xx.xx.pth refers to the name of a pre-trained model, where x refers to a number value.

Citation

If you find our work useful, please cite as

@inproceedings{bi2024learning,
  title={Learning Generalized Medical Image Segmentation from Decoupled Feature Queries},
  author={Bi, Qi and Yi, Jingjun and Zheng, Hao and Ji, Wei and Huang, Yawen and Li, Yuexiang and Zheng, Yefeng},
  booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
  volume={38},
  number={2},
  pages={810--818},
  year={2024}
}

Acknowledgement

The development of Decoupled Feature Queries (DFQ) largely relies on two prior projects:

(1) The code of dataloader is based on RAM-DSIR published in ECCV2022, with the code link [https://github.com/zzzqzhou/RAM-DSIR].

(2) The code of feature as query is highly based on FeedFormer published in AAAI2023, with the code link [https://github.com/jhshim1995/FeedFormer].