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Salehin et al., 2021 - Google Patents

IFSG: Intelligence agriculture crop-pest detection system using IoT automation system

Salehin et al., 2021

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Document ID
17206137614499494212
Author
Salehin I
Noman S
Baki-Ul-Islam I
Bishnu P
Habiba U
Nessa N
Publication year
Publication venue
Indonesian Journal of Electrical Engineering and Computer Science

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Nowadays, the technological revolution is a great blessing for humanity. Similarly, Food is very essential for human life which depends on agriculture revulsion. For the great revolution we have proposed a collaboration between agriculture and internet of things …
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