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Cross-platform comparison of RGB vegetation indices on winter wheat: identifying robust metrics for smartphone to satellite calibration
 
Więcej
Ukryj
1
Institute of Water Problems and Land Reclamation of NAAS
 
2
Institute of Climate-Smart Agriculture of NAAS, Odesa, Ukraine
 
3
Kherson State Agrarian and Economic University, Universitetskyi Avenue 5/2, Kropyvnytskyi, Ukraine
 
4
National University of Life and Environmental Sciences of Ukraine, Heroiv Oborony 15 Street, Kyiv, Ukraine
 
 
Autor do korespondencji
Pavlo Volodymyrovych Lykhovyd   

Institute of Water Problems and Land Reclamation of NAAS
 
 
 
SŁOWA KLUCZOWE
DZIEDZINY
STRESZCZENIE
Timely and precise crop monitoring is essential for precision agriculture, yet spaceborne remote sensing frequently suffers from temporal gaps, cloud cover, and high subscription costs. Consumer-grade smartphone photography offers a low-cost alternative for localized monitoring, though its implementation remains doubtful due to lack of standardization and calibration. This study evaluates the cross-platform consistency of visible spectrum (RGB) vegetation indices between Sentinel-2A satellite imagery and ground-truth smartphone photography. Field trials were conducted across four winter wheat (Triticum aestivum L.) fields, located in the semi-arid zone of Ukraine, systematically capturing crop canopy development across three major phenological stages: tillering, stem elongation, and earing. Six visible spectrum vegetation indices (ExG, ExGR, GLI, VARI, MGRVI, and CIVE) were evaluated. A comparison of static absolute index values revealed strong cross-platform correlation for ExGR, VARI, MGRVI and CIVE (R = 0.74–0.77). Switching to the daily index change rates analysis dramatically changed cross-platform interoperability. The MGRVI emerged as the only robust metric, achieving a superior dynamic linear correlation (R = 0.89) and accounting for 78% of spaceborne variance with RMSE of 0.014. Other smartphone-derived vegetation indices provided moderate to weak (R = 0.26–0.66) correlation with satellite-borne indices, that makes them less suitable for implementation in cross-platform crop monitoring systems. The regression model for smartphone to satellite calibration of MGRVI serves as a pre-condition of cross-platform interoperability in digital systems of precise crop monitoring.
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