2021
DOI: 10.1007/s12539-020-00404-5
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Automatic Detection of Genetics and Genomics of Eye Disease Using Deep Assimilation Learning Algorithm

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Cited by 5 publications
(2 citation statements)
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“…In [13] introduced the DL-CAEF (DLT Assisted Convolution Auto-Encoders Frameworks) to diagnose glaucoma and recognize AVPs (Anterior Visual Pathways) from retinal fundus pictures. In [15] identified CWS, HE on retinal images using super iterative clustering approach which comprised of CNNs and encoders with encoder structures. To convert red, blue and green images into ideal grayscale images devoid of noises, FBMIR dataset's data were combined with histogram filters and subsequently categorized using DALAs (deep assimilation learning algorithms).…”
Section: Related Workmentioning
confidence: 99%
“…In [13] introduced the DL-CAEF (DLT Assisted Convolution Auto-Encoders Frameworks) to diagnose glaucoma and recognize AVPs (Anterior Visual Pathways) from retinal fundus pictures. In [15] identified CWS, HE on retinal images using super iterative clustering approach which comprised of CNNs and encoders with encoder structures. To convert red, blue and green images into ideal grayscale images devoid of noises, FBMIR dataset's data were combined with histogram filters and subsequently categorized using DALAs (deep assimilation learning algorithms).…”
Section: Related Workmentioning
confidence: 99%
“…In [13] introduced the DL-CAEF (DLT Website: www.ijeer.forexjournal.co.in An Adaptive Technique for Underwater Image Enhancement with CNN and Ensemble Classifier Assisted Convolution Auto-Encoders Frameworks) to diagnose glaucoma and recognize AVPs (Anterior Visual Pathways) from retinal fundus pictures. In [15] identified CWS, HE on retinal images using super iterative clustering approach which comprised of CNNs and encoders with encoder structures. To convert red, blue and green images into ideal grayscale images devoid of noises, FBMIR dataset's data were combined with histogram filters and subsequently categorized using DALAs (deep assimilation learning algorithms).…”
Section: ░ 2 Related Workmentioning
confidence: 99%