Experiments of Federated Learning for COVID-19 Chest X-ray Images

@article{Liu2021ExperimentsOF,
  title={Experiments of Federated Learning for COVID-19 Chest X-ray Images},
  author={Boyi Liu and Bingjie Yan and Yize Zhou and Yifan Yang and Yixian Zhang},
  journal={ArXiv},
  year={2021},
  volume={abs/2007.05592}
}
AI plays an important role in COVID-19 identification. Computer vision and deep learning techniques can assist in determining COVID-19 infection with Chest X-ray Images. However, for the protection and respect of the privacy of patients, the hospital's specific medical-related data did not allow leakage and sharing without permission. Collecting such training data was a major challenge. To a certain extent, this has caused a lack of sufficient data samples when performing deep learning… 

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