info:eu-repo/semantics/article
Automatic design of aperture filters using neural networks applied to ocular image segmentation
Fecha
2014-09Registro en:
Benalcazar Palacios, Marco Enrique; Brun, Marcel; Ballarin, Virginia Laura; Automatic design of aperture filters using neural networks applied to ocular image segmentation; European Association for Signal Processing; European Signal Processing Conference; 22; 9-2014; 2195-2199
2219-5491
CONICET Digital
CONICET
Autor
Benalcazar Palacios, Marco Enrique
Brun, Marcel
Ballarin, Virginia Laura
Resumen
Aperture filters are image operators which combine mathematical morphology and pattern recognition theory to design windowed classifiers. Previous works propose designing and representing such operators using large decision tables and classic linear pattern classifiers. These approaches demand an enormous computational cost in order to solve real image problems. The current work presents a new method to automatically design Aperture filters for color and grayscale image processing. This approach consists of designing a family of Aperture filters using artificial feed-forward neural networks. The resulting Aperture filters are combined into a single one using an ensemble method. The performance of the proposed approach was evaluated by segmenting blood vessels in ocular images of the DRIVE database. The results show the suitability of this approach: It outperforms window operators designed using neural networks and logistic regression as well as Aperture filters designed using logistic regression and support vector machines.