An Improved Disc Segmentation Based on U-Net Architecture for Glaucoma Diagnosis

Author:

Touahri Radia1,Azizi Nabiha2,Hammami Nacer Eddine3,Benaida Farid1,Zemmal Nawel4,Gasmi Ibtissem5

Affiliation:

1. Badji Mokhtar University, Algeria

2. Labged Laboratory, Badji Mokhtar University, Algeria

3. Mustaqbal University, Saudi Arabia

4. Mohamed Cherif Messaadia University, Algeria

5. Chadli Bendjedid El Tarf University, Algeria

Abstract

Various computer-aided diagnosis systems have been expanded and used for diagnosing glaucoma. Since the optic disc and optic cup are the main parameters for the early detection of glaucoma, this study proposes an accurate CAD system that firstly detects the optic disc and cup then classifies them into normal or abnormal. The U-Net architecture is employed. Despite its excellent segmentation performances, this model repeatedly extracts low-level features, which leads to redundant use of computational sources. To address these issues, a two-stage segmentation of the optic disc and cup was proposed. Firstly, a region of interest (ROI) is extracted from the fundus images by localizing and cutting the optic disc zone. Then, a U-Net model was built in order to obtain the refined segmentation. The public REFUGE dataset is adopted to validate proposed system. After a data augmentation step, an average accuracy of 0.97 and 0.96 for predicted OD cut off area and predicted original images respectively are obtained.

Publisher

IGI Global

Subject

Software

Reference23 articles.

1. Image Processing Techniques for Automatic Detection of Glaucoma. International Journal of Latest Technology in Engineering, Management &;N. S.Chethan Kumar;Applied Sciences,2017

2. Design of algorithms for diagnosis of primary glaucoma through estimation of CDR in different types of Fundus Images using IP techniques;A.Tugashetti;International Journal of Innovative Research in Information Security,2017

3. Optical cup to disc ratio measurement for glaucoma diagnosis using harris corner

4. A Comparative Study of Convolutional Neural Network and Twin SVM for Automatic Glaucoma Diagnosis;R.Touahri;International Conference on Signal, Image, Vision and their Applications (SIVA)

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