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Deep learning framework for image reconstruction

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DIRECT: Deep Image REConstruction Toolkit

DIRECT is a Python, end-to-end pipeline for solving Inverse Problems emerging in Imaging Processing. It is built with PyTorch and stores state-of-the-art Deep Learning imaging inverse problem solvers such as denoising, dealiasing and reconstruction. By defining a base forward linear or non-linear operator, DIRECT can be used for training models for recovering images such as MRIs from partially observed or noisy input data.

DIRECT stores inverse problem solvers such as the Learned Primal Dual algorithm and Recurrent Inference Machine, which were part of the winning solution in Facebook & NYUs FastMRI challenge in 2019 and the Calgary-Campinas MRI reconstruction challenge at MIDL 2020. For a full list of the baselines currently implemented in DIRECT see here.

Installation

See install.md.

Quick Start

See getting_started.md, check out the documentation. In the projects folder examples are given on how to train models on public datasets.

Baselines and trained models

We provide a set of baseline results and trained models in the DIRECT Model Zoo.

License

DIRECT is released under the Apache 2.0 License.

Citing DIRECT

If you use DIRECT in your own research, or want to refer to baseline results published in the DIRECT Model Zoo, please use the following BiBTeX entry:

@misc{DIRECTTOOLKIT,
  author =       {Yiasemis, George and Moriakov, Nikita and Karkalousos, Dimitrios and Caan, Matthan and Teuwen, Jonas},
  title =        {DIRECT: Deep Image REConstruction Toolkit},
  howpublished = {\url{https://github.com/directgroup/direct}},
  year =         {2021}
}

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Deep learning framework for image reconstruction

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