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A Survey of Deep Learning Techniques for Maize Leaf Disease Detection: Trends from 2016 to 2021 and Future Perspectives
2022
Journal of electrical and computer engineering innovations
and Objectives: To a large extent, low production of maize can be attributed to diseases and pests. Accurate, fast, and early detection of maize plant disease is critical for efficient maize production. Early detection of a disease enables growers, breeders and researchers to effectively apply the appropriate controlled measures to mitigate the disease's effects. Unfortunately, the lack of expertise in this area and the cost involved often result in an incorrect diagnosis of maize plant
doi:10.22061/jecei.2022.8602.531
doaj:6e52fc9d0bbf4924beb8a6b8114b0b5f
fatcat:2gbgb2anw5fkpaiyd3gxnpzcsq