Artículos de revistas
Automatic Segmentation of Exudates in Ocular Images using Ensembles of Aperture Filters and Logistic Regression
Fecha
2013-10Registro en:
Benalcazar Palacios, Marco Enrique; Brun, Marcel; Ballarin, Virginia Laura; Automatic Segmentation of Exudates in Ocular Images using Ensembles of Aperture Filters and Logistic Regression; IOPScience; Journal of Physics: Conference Series; 477; 1; 10-2013
1742-6588
1742-6596
CONICET Digital
CONICET
Autor
Benalcazar Palacios, Marco Enrique
Brun, Marcel
Ballarin, Virginia Laura
Resumen
Hard and soft exudates are the main signs of diabetic macular edema (DME). The segmentation of both kinds of exudates generates valuable information not only for the diagnosis of DME, but also for treatment, which helps to avoid vision loss and blindness. In this paper, we propose a new algorithm for the automatic segmentation of exudates in ocular fundus images. The proposed algorithm is based on ensembles of aperture filters that detect exudate candidates and remove major blood vessels from the processed images. Then, logistic regression is used to classify each candidate as either exudate or non-exudate based on a vector of 31 features that characterize each potensial lesion. Finally, we tested the performance of the proposed algorithm using the images in the public HEI-MED database.