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DEEP NEURAL NETWORK-BASED ENSEMBLE MODEL FOR EYE DISEASES DETECTION AND CLASSIFICATION
Journal article   Open access   Peer reviewed

DEEP NEURAL NETWORK-BASED ENSEMBLE MODEL FOR EYE DISEASES DETECTION AND CLASSIFICATION

Afsana Ahsan Jeny, Masum Shah Junayed and Md Baharul Islam
Image analysis & stereology, Vol.42(2), pp.77-91
01-01-2023

Abstract

Imaging Science & Photographic Technology Materials Science, Multidisciplinary Mathematics, Applied Science & Technology Materials Science Mathematics Mechanics Physical Sciences Technology
Fundus images are the principal tool for observing and recognizing a wide range of ophthalmological abnormalities. The automatic and robust methods based on color fundus images are urgently needed since few symptoms are observable in the early stages of the disease. Experts must manually evaluate images to detect diseases for screening procedures to be effective. Due to the complexity of the screening procedure and the shortage of experienced personnel, developing successful screening-based treatments is costly. Although existing automated approaches strive to address these issues, they cannot handle a wide range of diseases and real-world circumstances. We design an automated deep learning-based ensemble method to detect and classify eye diseases from fundus images to address the abovementioned problems. A deep CNN-based model is proposed in the ensemble method that incorporates a mix of 20 layers, including the activation, optimization, and loss functions. The contrast-limited adaptive histogram equalization (CLAHE) and Gaussian filter are utilized in the pre-processing step to get more explicit images and eliminate noise. To avoid overfitting in the training phase, augmentation techniques are applied. Three pre-trained CNN models, including VGG16, DenseNet201, and ResNet50, are employed to compare and assess the efficiency of the proposed CNN model. Experimental results demonstrate that the ensemble approach outperforms recent approaches, which is comparatively state-of-art in the ODIR publicly available dataset.
url
https://doi.org/10.5566/ias.2857View
Published (Version of record) Open

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