High-resolution satellite image to predict peanut maturity variability in commercial fields

One of the main problems in the peanut production process is to identify the pod maturity stage. Peanut plants have indeterminate growth, which leads to a high pod maturity variability within the same plant. Moreover, the actual method of determining maturity is destructive and highly subjectivity,...

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Veröffentlicht in:Precision agriculture 2021-10, Vol.22 (5), p.1464-1478
Hauptverfasser: dos Santos, Adão Felipe, Corrêa, Lígia Negri, Lacerda, Lorena Nunes, Tedesco-Oliveira, Danilo, Pilon, Cristiane, Vellidis, George, da Silva, Rouverson Pereira
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Sprache:eng
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Zusammenfassung:One of the main problems in the peanut production process is to identify the pod maturity stage. Peanut plants have indeterminate growth, which leads to a high pod maturity variability within the same plant. Moreover, the actual method of determining maturity is destructive and highly subjectivity, which does not represent the overall variability in the field. Hence, the main goal of this study was to verify the possibility to estimate peanut maturity and its in-field variability using an alternative non-destructive method based on orbital remote sensing. High-resolution satellite images (~ 3 m) were obtained from the PlanetScope platform for two commercial peanut fields in São Paulo state, Brazil, during the reproductive stage of the peanut crop (89 to 118 days after sowing—DAS). The fields were divided into 54 plots (30 × 30 m). The maturity was obtained using the Hull Scrape method. All Vegetation Indices (VIs) used showed a high Pearson correlation (p 
ISSN:1385-2256
1573-1618
DOI:10.1007/s11119-021-09791-1