PySAP: Python Sparse Data Analysis Package for multidisciplinary image processing

@article{Farrens2020PySAPPS,
  title={PySAP: Python Sparse Data Analysis Package for multidisciplinary image processing},
  author={Samuel Farrens and Antoine Grigis and Loubna El Gueddari and Zaccharie Ramzi and R. ChaithyaG. and S. Starck and B. Sarthou and Hamza Cherkaoui and Philippe Ciuciu and Jean-Luc Starck},
  journal={Astron. Comput.},
  year={2020},
  volume={32},
  pages={100402}
}

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