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FOD-Swin-Net

Description

This README accompanies the submission of the article and includes the following items if the article is accepted:

  1. Training Code The model training can be executed by running the following command:

    python3 main.py configs/swin_purity_patch_96.yaml

    It is crucial that the training datasets and validation datasets are configured and adjusted to the mempy format; otherwise, the code will not function properly.

  2. Usage Instructions The files that can be used to configure the datasets include save_mem_map.py, save_index_mask.py, and save_coordinates_Patches.py. It is important to pre-configure them to efficiently run the model.

  3. Model Diagram Below is the diagram of our proposed model:

    Model Diagram

  4. Citation If you use this code, please cite our paper:

    @article{oliveira2024fod,
      title={FOD-Swin-Net: angular super resolution of fiber orientation distribution using a transformer-based deep model},
      author={Oliveira da Silva, Mateus and Pinheiro Santana, Caio and Santos do Carmo, Diedre and Rittner, Let{\'\i}cia},
      journal={arXiv e-prints},
      pages={arXiv--2402},
      year={2024}
    }

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