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A Comparative Study of the CNN Based Models Used for Remote Sensing Image Classification

Author(s): Supritha N1* and Dr. Narasimha Murthy M S2

Publisher : FOREX Publication

Published : 10 July 2023

e-ISSN : 2347-470X

Page(s) : 646-651




Supritha N*, Research Scholar, Department of Computer Science & Engineering, BMS Institute of Technological and Management, Bengaluru, VTU, Belgaum, Karnataka, India; Email: suprithan@gmail.com

Dr. Narasimha Murthy M S, Assistant Professor, Department of Information Science & Engineering, BMS Institute of Technological and Management, Bengaluru, VTU, Belgaum, Karnataka, India; Email: narasimhamurthyms@bmsit.in

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Supritha N and Dr. Narasimha Murthy M S (2023), A Comparative Study of the CNN Based Models Used for Remote Sensing Image Classification. IJEER 11(3), 646-651. DOI: 10.37391/ijeer.110301.