RIM-ONE DL: A Unified Retinal Image Database for Assessing Glaucoma Using Deep Learning

  1. Silvia Alayon 1
  2. Tinguaro Diaz-Aleman 2
  3. Denisse Angel-Pereira 2
  4. Jose Sigut 1
  5. Rafael Arnay 1
  6. Francisco José Fumero Batista 1
  1. 1 Department of Computer Engineering and Systems, University of La Laguna
  2. 2 Servicio de Oftalmología, Hospital Universitario de Canarias
Revista:
Image Analysis & Stereology

ISSN: 1854-5165

Año de publicación: 2020

Volumen: 39

Número: 3

Páginas: 161-167

Tipo: Artículo

DOI: 10.5566/IAS.2346 GOOGLE SCHOLAR lock_openAcceso abierto editor

Otras publicaciones en: Image Analysis & Stereology

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