CRTI - Centre de Recherche en Technologie de l'Information
Disciplines :
Computer science
Author, co-author :
Mahmoudi, Sidi ; Université de Mons > Faculté Polytechnique > Service Informatique, Logiciel et Intelligence artificielle
Stassin, Sédrick ; Université de Mons > Faculté Polytechnique > Service Informatique, Logiciel et Intelligence artificielle
Daho, Mostafa El Habib
Lessage, Xavier
Mahmoudi, Said ; Université de Mons > Faculté Polytechnique > Service Informatique, Logiciel et Intelligence artificielle
Language :
English
Title :
Explainable Deep Learning for Covid-19 Detection Using Chest X-ray and CT-Scan Images
Publication date :
22 June 2021
Main work title :
Intelligent Healthcare Informatics for Fighting the COVID-19 and Other Pandemics and Epidemics
Publisher :
Springer
Pages :
323-338
Research unit :
F114 - Informatique, Logiciel et Intelligence artificielle
Research institute :
R300 - Institut de Recherche en Technologies de l'Information et Sciences de l'Informatique R450 - Institut NUMEDIART pour les Technologies des Arts Numériques
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