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  1. Home
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  5. Classification of Multiple Visual Field Defects using Deep Learning
 
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Classification of Multiple Visual Field Defects using Deep Learning

Journal
Journal of Physics: Conference Series
ISSN
17426588
Date Issued
2021-03-01
Author(s)
Masyitah Abu
Universiti Malaysia Perlis
Nik Adilah Hanin Zahri
Universiti Malaysia Perlis
Amir A.
Muhammad Izham Ismail
Universiti Malaysia Perlis
Latifah Munirah Kamarudin
Universiti Malaysia Perlis
Nishizaki H.
DOI
10.1088/1742-6596/1755/1/012014
Abstract
In this work, a custom deep learning method is proposed to develop a detection of visual fields defects which are the markers for serious optic pathway disease. Convolutional Neural Networks (CNN) is a deep learning method that is mostly used in images processing. Therefore, a custom 10 layers of CNN algorithm is built to detect the visual field defect. In this work, 1200 visual field defect images acquired from the Humphrey Field Analyzer 24-2 collected from Google Image have been used to classify 6 types of visual field defect. The defect patterns are including defects at central scotoma, right/left/upper/lower quadratopia, right/left hemianopia, vision tunnel, superior/inferior field defect and normal as baseline. The custom designed CNN is trained to discriminate between defect patterns in visual field images. In the proposed method, a mechanism of pre-processing is included to improve the classification of visual field defects. Then, the 6 visual field defect patterns are detected using a convolutional neural network. The dataset is evaluated using 5-fold cross-validation. The results of this work have shown that the proposed algorithm achieved a high classification rate with 96%. As comparison, traditional machine learning Support Vector Machine (SVM) and Classical Neural Network (NN) is chose and obtained classification rate at 74.54% and 90.72%.
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research repository notification.pdf (4.4 MB)
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Acquisition Date
Nov 19, 2024
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