Fundus image quality enhancement for blood vessel detection via a neural network using CLAHE and Wiener filter

Jucelino Cardoso Marciano dos Santos1, Gilberto Arantes Carrijo1, Cristiane de Fátima dos Santos Cardoso2, Júlio César Ferreira2, Pedro Moisés de Sousa3, Ana Cláudia Patrocínio3
1Signal Processing Lab, Faculty of Electrical Engineering, Federal University of Uberlândia, Campus Sta Mônica, Av. João Naves de Ávila, 2121, Bloco 1N, Uberlândia, MG, CEP 38400-000, Brazil
2Computer Vision Lab, Informatics Nucleo, Goiano Federal Institute of Education, Science and Technology, Campus Urutaí, Rodovia Geraldo Silva Nascimento, km 2.5, Zona Rural, Bloco de Informática, Urutaí, GO, CEP 75790-000, Brazil
3Biomedical Lab, Faculty of Electrical Engineering, Federal University of Uberlândia, Campus Sta Mônica, Av. João Naves de Ávila, 2121, Bloco 3N, Uberlândia, MG, CEP 38400-000, Brazil

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