Deep-GlaucomaNet: A Deep Learning based Approach for Glaucoma Detection in Fundus Images

2023 14th International Conference on Computing Communication and Networking Technologies (ICCCNT)(2023)

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摘要
Glaucoma is a chronic eye disease that is a leading cause of irreversible vision loss worldwide. Early and accurate classification of glaucoma is crucial for timely intervention and effective management. In this study, we propose a novel glaucoma classification model named as Deep-GlaucomaNet based on advanced deep learning techniques to achieve high accuracy and reliability. Here, the GoogLeNet model has been employed as a base model. The last four layers of the GoogLeNet were replaced with the customized 15 layers. The augmentation technique has been applied for avoiding overfitting is-sues. The performance of the model is evaluated with two activation functions ReLU and Swish. The proposed model earns better classification accuracy 94.39% on the G1020 dataset and represents its perfection over other existing models.
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关键词
CNN,Optical coherence tomography (OCT),Glaucomatous optic disc changes (GON),Computer aided diagnosis (CAD),Batch normalization (BN),Deep neural network (DNN),Machine learning (ML),Deep learning (DL)
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