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CITATION.cff
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cff-version: 1.2.0
message: "If you use this software, please cite the software itself via zenodo as below, plus a CIL article, please see the CIL README for more details: https://github.com/TomographicImaging/CIL"
abstract: >
The Core Imaging Library (CIL) is an open-source Python framework for tomographic imaging
with particular emphasis on reconstruction of challenging datasets. Conventional filtered
backprojection reconstruction tends to be insufficient for highly noisy, incomplete, non-standard
or multichannel data arising for example in dynamic, spectral and in situ tomography. CIL
provides an extensive modular optimisation framework for prototyping reconstruction methods
including sparsity and total variation regularisation, as well as tools for loading, preprocessing
and visualising tomographic data.
authors:
- family-names: Pasca
given-names: Edoardo
- family-names: Jørgensen
given-names: Jakob Sauer
- family-names: Papoutsellis
given-names: Evangelos
- family-names: Ametova
given-names: Evelina
- family-names: Fardell
given-names: Gemma
- family-names: Thielemans
given-names: Kris
- family-names: Murgatroyd
given-names: Laura
- family-names: Duff
given-names: Margaret
- family-names: da Costa-Luis
given-names: Casper
- family-names: Robarts
given-names: Hannah
- family-names: Sugic
given-names: Danica
title: Core Imaging Library (CIL)
date-released: '2018-01-08'
identifiers:
- description: This is the collection of archived snapshots of all versions of the Core Imaging Library
type: doi
value: 10.5281/zenodo.4746198
keywords:
- tomographic imaging
- research
- tomography
- reconstruction
- imaging
- hyperspectral
- optimisation
license: Apache-2.0