Компьютерная оптика (Aug 2022)

Neural network application for semantic segmentation of fundus

  • R.A. Paringer,
  • A.V. Mukhin,
  • N.Y. Ilyasova,
  • N.S. Demin

DOI
https://doi.org/10.18287/2412-6179-CO-1010
Journal volume & issue
Vol. 46, no. 4
pp. 596 – 602

Abstract

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Advances in the neural networks have brought revolution in many areas, especially those related to image processing and analysis. The most complex is a task of analyzing biomedical data due to a limited number of samples, imbalanced classes, and low-quality labelling. In this paper, we look into the possibility of using neural networks when solving a task of semantic segmentation of fundus. The applicability of the neural networks is evaluated through a comparison of image segmentation results with those obtained using textural features. The neural networks are found to be more accurate than the textural features both in terms of precision (~25%) and recall (~50%). Neural networks can be applied in biomedical image segmentation in combination with data balancing algorithms and data augmentation techniques.

Keywords