Autores
Ochoa Montiel María del Rocío
Román Godínez Rodrigo Francisco
Zamora Gómez Erik
Sossa Azuela Juan Humberto
Título Dendritic neural networks in the classification of estrous cycle images
Tipo Revista
Sub-tipo SCOPUS
Descripción International Journal of Combinatorial Optimization Problems and Informatics
Resumen In the biological area, the short reproductive cycle in rodents is useful because it allows analyzed electrophysiological properties, behaviors, or drug effects through the changes observed during this period. This cycle is composed of 4 stages in which the classification is determined by vaginal cytology. Although automatic approaches have been used for the classification of these stages, they are computationally expensive and require a great number of images for adequate performance. In this paper, we test different models of dendritic neural networks (DNN) trained by stochastic gradient descent to classify a short number of images and four classical contrast enhancement methods. We extract texture features and use standard and DNN classifiers to recognize the images. From the experiments, it seems that DNNs have a more stable behavior concerning the standard classifiers according to the standard deviation presented, being this a desirable property for a model. We consider that DNN could be an adequate alternative for the classification of estrous cycle images.
Observaciones
Lugar Morelos
País Mexico
No. de páginas 39-48
Vol. / Cap. v. 14 no 1
Inicio 2023-03-01
Fin
ISBN/ISSN