An exudate detection method for diagnosis risk of diabetic macular edema in retinal images using feature-based and supervised classification
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Javier Garrido | José Manuel Bravo | Manuel Emilio Gegúndez-Arias | Diego Marin | Carlos Ortega | Manuel Jesús Vasallo Vázquez | Beatriz Ponte | Fatima Alvarez | J. M. Bravo | B. Ponte | C. Ortega | F. Alvarez | D. Marín | J. Garrido | M. E. Gegúndez-Arias
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