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Al-Wesabi et al., 2022 - Google Patents

Artificial Intelligence Enabled Apple Leaf Disease Classification for Precision Agriculture.

Al-Wesabi et al., 2022

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Document ID
9549603561377936437
Author
Al-Wesabi F
Albraikan A
Hilal A
Eltahir M
Hamza M
Zamani A
Publication year
Publication venue
Computers, Materials & Continua

External Links

Snippet

Precision agriculture enables the recent technological advancements in farming sector to observe, measure, and analyze the requirements of individual fields and crops. The recent developments of computer vision and artificial intelligence (AI) techniques find a way for …
Continue reading at www.academia.edu (PDF) (other versions)

Classifications

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