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Development of Smart Agriculture to Detect the Arabica Coffee Leaf Disease using IAFSA based MSAB with Channel and Spatial Attention Network

Author(s): Dr. R Saravanakumar*, Dr. Puneet Matapurkar, Dr. G. Shivakanth, Dr Vinay Kumar Nassa, Dr. Santosh Kumar and Dr. S. Poonguzhali

Publisher : FOREX Publication

Published : 30 December 2023

e-ISSN : 2347-470X

Page(s) : 1255-1260




Dr. R Saravanakumar*, Associate Professor, Department of Wireless Communication, Institute of ECE, Saveetha Institute of Medical and Technical Sciences, Chennai 602105; Email: saravanakumarr.sse@saveetha.com

Dr. Puneet Matapurkar, Assistant Professor, Department of Mathematical Sciences and Computer Applications, Bundelkhand University, Jhansi (U.P.), Pin code 284128; Email: pmatapurkar.mca@gmail.com

Dr. G. Shivakanth, Associate Professor, Dept. of CSE, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur, Andhra Pradesh, Bharat; Email: shvkanth0@gmail.com

Dr Vinay Kumar Nassa, Professor Department of Information Communication Technology (ICT), Tecnia Institute of Advanced Studies (Delhi), Affiliated with Guru Gobind Singh Indraprastha University; Email: vn.nassa@gmail.com

Dr. Santosh Kumar, Professor, Department of Computer Science, ERA University, Lucknow, Uttar Pradesh; Email: sanb2lpcps@gmail.com

Dr. S. Poonguzhali, Assistant Professor, VIT School of Agricultural Innovations and Advanced Learning, Vellore Institute of Technology, Vellore, Tamil Nadu, India; Email: poonguzhalimanian@gmail.com

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Dr. R Saravanakumar, Dr. Puneet Matapurkar, Dr. G. Shivakanth, Dr Vinay Kumar Nassa, Dr. Santosh Kumar and Dr. S. Poonguzhali (2023), Development of Smart Agriculture to Detect the Arabica Coffee Leaf Disease using IAFSA based MSAB with Channel and Spatial Attention Network. IJEER 11(4), 1255-1260. DOI: 10.37391/ijeer.110448.