Combining morphometric features and convolutional networks fusion for glaucoma diagnosis Conference Poster

abstract

  • Glaucoma is an eye condition that leads to loss of vision and blindness. Ophthalmoscopy exam evaluates the shape, color and proportion between the optic disc and physiologic cup, but the lack of agreement among experts is still the main diagnosis problem. The application of deep convolutional neural networks combined with automatic extraction of features such as: the cup-to-disc distance in the four quadrants, the perimeter, area, eccentricity, the major radio, the minor radio in optic disc and cup, in addition to all the ratios among the previous parameters may help with a better automatic grading of glaucoma. This paper presents a strategy to merge morphological features and deep convolutional neural networks as a novel methodology to support the glaucoma diagnosis in eye fundus images.

publication date

  • 2017-1-1

keywords

  • Color
  • Eccentricity
  • Evaluate
  • Fusion
  • Fusion reactions
  • Grading
  • Methodology
  • Minor
  • Neural Networks
  • Neural networks
  • Optics
  • Perimeter
  • Proportion
  • Quadrant
  • Strategy
  • Vision
  • blindness
  • color
  • eccentricity
  • fusion
  • glaucoma
  • methodology
  • optics
  • proportion
  • quadrants

ISBN

  • 9781510616332