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Repository Details

[TMI'20] Unpaired Multi-modal Segmentation via Knowledge Distillation

UMMKD

Unpaired Multi-modal Segmentation via Knowledge Distillation

We propose a novel learning scheme for unpaired cross-modality image segmentation, with a highly compact architecture achieving superior segmentation accuracy. In our method, we heavily reuse network parameters, by sharing all convolutional kernels across CT and MRI, and only employ modality-specific internal normalization layers which compute respective statistics. To effectively train such a highly compact model, we introduce a novel loss term inspired by knowledge distillation, by explicitly constraining the KL-divergence of our derived prediction distributions between modalities. We have extensively validated our approach on two multi-class segmentation problems: i) cardiac structure segmentation, and ii) abdominal organ segmentation. Different network settings, i.e., 2D dilated network and 3D U-Net, are utilized to investigate our method's general efficacy.

This is the reference implementation of the unpaired multi-modal segmentation method described in our paper:

@inproceedings{dou2020unpaired,
    author = {Qi Dou and Quande Liu and Pheng Ann Heng and Ben Glocker},
    title = {Unpaired Multi-modal Segmentation via Knowledge Distillation},
    booktitle = {IEEE Transactions on Medical Imaging},
    year = {2020},
}

If you make use of the code, please cite the paper in any resulting publications.

Setup

Check dependencies in requirements.txt, and necessarily run

pip install -r requirements.txt

Running UMMKD

2D version

To run our 2D version, can directly use the tfrecord data released in our another relevant project from here

To train the model, specify the training configurations (can simply use the default setting), in main_combine.py set:

restored_model = None
main(restored_model = restored_model, phase='training')

To test the model, specify the path of the model to be tested, in main_combine.py set:

test_model = '/path/to/test_model.cpkt'
source_dice, target_dice = main(test_model=test_model, phase='testing')

Tensorboard will be automatically launched with port specified in main_combine.py

3D version

To run our 3D version, first:

cd 3d_implementation

To train the model, specify the training configurations (can simply use the default setting) in main.py, then run:

python main.py

To test the model, specify the path of tested model in test.py:

test_model = '/path/to/test_model.cpkt'

then run:

python test.py