2022
DOI: 10.1109/access.2022.3148691
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Remote Sensing and Machine Learning Modeling to Support the Identification of Sugarcane Crops

Abstract: One of the main concerns of agricultural financing institutions is to make sure the loans they grant are used for the stated objective when the loan was requested. Specifically, when Banco Agrario de Colombia grants loans for crop farmers, it schedules verification visits to the cultivation sites to check if the crop stipulated in the loan agreement exists and assess its health. These visits are challenging to make due to the number of visits over vast areas that they need to schedule, lack of trained personne… Show more

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Cited by 4 publications
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“…In the crop management category, ML techniques are used to manage crops to achieve quantitative and qualitative targets by combining farming techniques to regulate the biological, chemical, and physical crop environment. The automatic recognition and classification of crops has gained attention in various scientific fields, and advancements were made through the employment of ML algorithms and remote sensing, which leveraged the automatic recognition and classification of crops (FENG et al, 2019;LOZANO-GARZON et al, 2022). Besides that, weed detection and management is a significant problem in agriculture as they are one of the most important threat to crop production (WANG; ZHANG; WEI, 2019).…”
Section: Advantages and Disadvantages Of Machine Learning Algorithmsmentioning
confidence: 99%
“…In the crop management category, ML techniques are used to manage crops to achieve quantitative and qualitative targets by combining farming techniques to regulate the biological, chemical, and physical crop environment. The automatic recognition and classification of crops has gained attention in various scientific fields, and advancements were made through the employment of ML algorithms and remote sensing, which leveraged the automatic recognition and classification of crops (FENG et al, 2019;LOZANO-GARZON et al, 2022). Besides that, weed detection and management is a significant problem in agriculture as they are one of the most important threat to crop production (WANG; ZHANG; WEI, 2019).…”
Section: Advantages and Disadvantages Of Machine Learning Algorithmsmentioning
confidence: 99%