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A Diabetic Retinopathy Detection Using Customized Convolutional Neural Network

Author(s): Deepak Mane1*, Sunil Sangve2, Prashant Kumbharkar3, Snehal Ratnaparkhi4, Gopal Upadhye5 and Santosh Borde6

Publisher : FOREX Publication

Published : 30 June 2023

e-ISSN : 2347-470X

Page(s) : 609-615




Deepak Mane*, Vishwakarma Institute of Technology, Pune-411037, Maharashtra, India; Email: dtmane@gmail.com

Sunil Sangve, JSPM’S RajarshiShahu College of Engineering, Pune-411033, Maharashtra, India; Email: sunilsangve@gmail.com

Prashant Kumbharkar, JSPM’S RajarshiShahu College of Engineering, Pune-411033, Maharashtra, India; Email: pbk.rscoe@gmail.com

Snehal Ratnaparkhi, Rvichi Solvere Pvt Ltd, Austin, TX, USA 78641, India; Email: snehal@rvichi.com

Gopal Upadhye, Vishwakarma Institute of Technology, Pune-411037, Maharashtra, India; Email: gopalupadhye@gmail.com

Santosh Borde, JSPM’S Rajarshi Shahu College of Engineering, Pune-411033, Maharashtra, India; Email: santoshborde@yahoo.com

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Deepak Mane, Sunil Sangve, Prashant Kumbharkar, Snehal Ratnaparkhi, Gopal Upadhyeand Santosh Borde (2023), A Diabetic Retinopathy Detection Using Customized Convolutional Neural Network. ijeer 11(2), 609-615. DOI: 10.37391/ijeer.110250.