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篇名
Deployment of CNN on colour fundus images for the automatic detection of glaucoma
並列篇名
Deployment of CNN on colour fundus images for the automatic detection of glaucoma
作者 Ghorui, A. (Ghorui, A.)Chatterjee, S. (Chatterjee, S.)Makkar, R. (Makkar, R.)Pachiyappan, A. (Pachiyappan, A.)Balamurugan S (Balamurugan S)
英文摘要
Detection of glaucoma has become critical, as it has arisen as the subsequent essential driver of visual impairment, around the world. At present, most of the algorithms in use rely on pre-trained deep neural networks to produce the best results. However, the high computational time and complexity and the need of a large database, make glaucoma-detection arduous and difficult. Keeping these in mind, this paper proposes a new convolutional neural network architecture, in particular, ProspectNet, which has demonstrated to accomplish a better accuracy with lesser computational time and complexity when tested against two pre-trained networks: VGG16 and DenseNet121. The data set is an amalgamation of two publicly available datasets- DRISHTI-GS and Glaucoma Dataset (Kaggle), comprising ocular colour fundus images of glaucomatous as well as normal eyes. ProspectNet has accomplished a normal AUC (area under the curve) as 0.991, specificity, and precision as 0.98. Confusion matrices also plotted to illustrate the new architecture’s efficacy. These outcomes demonstrate that ProspectNet is a hearty option in contrast to other best in class calculations for a medium sized dataset. The paper suggests three distinct structures for glaucoma detection. One advantage of our approach is that no special feature selection, such as detailed measurements of particular traits like the structure of the optic nerve head, is necessary.
起訖頁 1-9
關鍵詞 GlaucomaOcular colour fundus imagesDeep convolutional neural networks.
刊名 國際應用科學與工程學刊  
期數 202306 (20:1期)
出版單位 朝陽科技大學理工學院
該期刊-上一篇 Artificial intelligence in agriculture: application trend analysis using a statistical approach
該期刊-下一篇 On hybrid schema matching modified model in minimizing user verification process in output validation
 

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