2021
DOI: 10.3991/ijoe.v17i14.24819
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Deep Learning in Retinal Image Segmentation and Feature Extraction: A Review

Abstract: Image recognition and understanding is considered as a remarkable subfield of Artificial Intelligence (AI). In practice, retinal image data have high dimensionality leading to enormous size data. As the morphological retinal image datasets can be analyzed in an expansive and non-invasive way, AI more precisely Deep Learning (DL) methods are facilitating in developing intelligent retinal image analysis tools. The most recently developed DL technique, Convolutional Neural Network (CNN) showed remarkable efficien… Show more

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Cited by 19 publications
(13 citation statements)
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References 62 publications
(133 reference statements)
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“…Because of them, adults are at risk of severe disability and possibly death. If an impending stroke can be recognised or predicted in its early stages, it may be feasible to significantly mitigate its effects [8][9][10]. Several risk factors for stroke have been established through the course of a great number of investigations and clinical trials.…”
Section: Introduction and Related Workmentioning
confidence: 99%
“…Because of them, adults are at risk of severe disability and possibly death. If an impending stroke can be recognised or predicted in its early stages, it may be feasible to significantly mitigate its effects [8][9][10]. Several risk factors for stroke have been established through the course of a great number of investigations and clinical trials.…”
Section: Introduction and Related Workmentioning
confidence: 99%
“…One major limitation of the methods reviewed thus far is that they relied on the fact that the fundus images used in training process are labeled by an expert in advance [13,19,20]. To overcome this limitation, Yuego et al [15] proposed a Self-supervised Fuzzy Clustering Network (SFCN) method that take as input unlabeled retinal images and classify them as having DR or not. Although the models trained are effective in detecting presence of the DR in the fundus images, however, they still do not solve the fundamental problem of specifying the severity of the disease.…”
Section: Classical Machine Learning Methodsmentioning
confidence: 99%
“…The method associates dynamic identity for users and removes constant parameters from user's request confirming that any two request messages are indistinguishable and independent. A study on current progresses in deep learning methodologies for feature extraction and retinal image segmentation was done by Kuryati et al [25]. Image compression methods built on neural network was analyzed in [26].…”
Section: Related Workmentioning
confidence: 99%