Implementación y evaluación de un sistema de detección mediante la captura de imágenes para la clasificación de estrabismo, utilizando redes neuronales convolucionales
Share
Date
2021-11-24
Director(s)
Publisher
Universidad Antonio Nariño
Campus
Program
Degree obtained
Document type
COAR type
http://purl.org/coar/resource_type/c_7a1f
Citation
Bibliographic Managers
Document Viewer
Select a file to preview:
item.page.resume
Abstract
The diagnosis of strabismus, is very important to do in time during childhood,
strabismus affects between 2% and 4% of the world population in children because this
condition produces amblyopia, which consists of the loss of vision in the deviated eye, once
developed the amblyopia, it cannot be treated, because the brain inhibits the signal from the
deviated eye, resulting in the gradual and permanent loss of visual acuity in the affected
eye.Convolutional neural networks were used for this study, In order to detect strabismus in
patient images, the model used is DenseNet 201, an architecture designed for image
classification tasks, trained by a set of own images, acquired by the authors, consisting of
332 images.
item.page.subject.keyword
item.page.coverage.spatial
Hulia