2020
DOI: 10.32604/cmc.2020.012008
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A Convolutional Neural Network Classifier VGG-19 Architecture for Lesion Detection and Grading in Diabetic Retinopathy Based on Deep Learning

Abstract: Diabetic Retinopathy (DR) is a type of disease in eyes as a result of a diabetic condition that ends up damaging the retina, leading to blindness or loss of vision. Morphological and physiological retinal variations involving slowdown of blood flow in the retina, elevation of leukocyte cohesion, basement membrane dystrophy, and decline of pericyte cells, develop. As DR in its initial stage has no symptoms, early detection and automated diagnosis can prevent further visual damage. In this research, using a Deep… Show more

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Cited by 49 publications
(18 citation statements)
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“…VGG stands for Visual Geometry Group, an academic group at Oxford University. This team presented two famous networks: VGG-16 (Jahangeer and Rajkumar, 2021) and VGG-19 (Sudha and Ganeshbabu, 2021), which are included as library packages of popular programming languages such as Python and MATLAB. This study chooses VGG-16 because it is easier to implement and has less layers, while VGG-16 has similar performance of VGG-19.…”
Section: Background Of Vgg-16mentioning
confidence: 99%
“…VGG stands for Visual Geometry Group, an academic group at Oxford University. This team presented two famous networks: VGG-16 (Jahangeer and Rajkumar, 2021) and VGG-19 (Sudha and Ganeshbabu, 2021), which are included as library packages of popular programming languages such as Python and MATLAB. This study chooses VGG-16 because it is easier to implement and has less layers, while VGG-16 has similar performance of VGG-19.…”
Section: Background Of Vgg-16mentioning
confidence: 99%
“…( Qummar et al, 2019 ) used an ensemble of Resnet50, Inceptionv3, Xception, Dense121, and Dense169 deep network models. ( Sudha & Ganeshbabu, 2021 ) adopted the VGG-19 model combined with structure tensor for enhancing local patterns of edge elements and active contours approximation for lesion segmentation. ( Vaishnavi, Ravi & Anbarasi, 2020 ) used Contrast-limited adaptive histogram equalization (CLAHE) model and AlexNet network architecture with SoftMax layer for classification.…”
Section: Results and Comparisonmentioning
confidence: 99%
“…The final fully connected layer gathers all features descriptors and flattens every matrix map into a vector. The VGG [21] group has utilized six deep convolutional neural networks out of which VGG16 and VGG19 models were found successful. VGG used depth as most prominent parameter to evaluate the network suitable for best recognition and accuracy in its classification of convolutional neural networks.…”
Section: Convolution Neural Network and Vgg16mentioning
confidence: 99%