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Harvest Date Monitoring in Cereal Fields at Large Scale Using Dense Stacks of Sentinel-2 Imagery Validated by Real Time Kinematic Positioning Data

Fernando Sedano (), Daniele Borio, Martin Claverie, Guido Lemoine, Philippe Loudjani, David Alfonso Nafría, Vanessa Paredes-Gómez, Francisco Javier Rojo-Revilla, Ferdinando Urbano and Marijn Van der Velde
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Fernando Sedano: European Commission—Joint Research Centre, 21027 Ispra, Italy
Daniele Borio: European Commission—Joint Research Centre, 21027 Ispra, Italy
Martin Claverie: European Commission—Joint Research Centre, 21027 Ispra, Italy
Guido Lemoine: European Commission—Joint Research Centre, 21027 Ispra, Italy
Philippe Loudjani: European Commission—Joint Research Centre, 21027 Ispra, Italy
David Alfonso Nafría: Technical Agrarian Institute of Castilla y Leon, Junta de Castilla y Leon, 47009 Valladolid, Spain
Vanessa Paredes-Gómez: Technical Agrarian Institute of Castilla y Leon, Junta de Castilla y Leon, 47009 Valladolid, Spain
Francisco Javier Rojo-Revilla: Technical Agrarian Institute of Castilla y Leon, Junta de Castilla y Leon, 47009 Valladolid, Spain
Ferdinando Urbano: European Commission—Joint Research Centre, 21027 Ispra, Italy
Marijn Van der Velde: European Commission—Joint Research Centre, 21027 Ispra, Italy

Agriculture, 2025, vol. 15, issue 18, 1-18

Abstract: This study presents an operational and robust method for detecting and dating cereal harvest events using temporal stacks of Copernicus Sentinel-2 imagery and crop and fields border information from ancillary records. The proposed approach is exempt from training data, thereby enabling its application across diverse geographical contexts. The method was used to generate 10 m resolution maps of harvest dates for all wheat and barley fields in 2021, 2022, and 2023 in Castilla y León, a major cereal-producing region of Spain. This work also investigates the use of a reference dataset derived from real time kinematic records (RTK) in agricultural machinery as an alternative source of large-scale in situ data reference as for Earth observation-based agricultural products. The initial comparison of annual harvest date maps with the RTK-based reference datasets revealed that the temporal lag in the detection of harvest events between Earth observation-derived maps and reference harvest dates was less than 10 days for 65.7% of fields, while the temporal lag was between 10 and 30 days for 26.1% of the fields. The 3-year average root mean square error of the lag between harvest dates in the reference dataset and maps was 16.1 days. An in-depth visual analysis of the Sentinel-2 temporal series was carried out to understand and evaluate the potential and limitations of the RTK-based reference dataset. The visual inspection of a representative sample of 668 fields with large temporal lags revealed that the date of harvest of 41.11% of these fields had been correctly identified in the Sentinel-2 based maps and 16.43% of them had been incorrectly identified. The visual inspection could not find evidence of harvest in 10.52% of the analyzed fields. Monte Carlo simulations were parameterized using the findings of the visual inspection to build a series of synthetic reference datasets. Accuracy metrics calculated from synthetic datasets revealed that the quality of the harvest maps was higher than what the initial comparison against the RTK-based reference dataset suggested. The date of harvest was registered within 10 days in both the maps and the synthetic reference datasets for 90.5% of the fields, the root mean squared error of the comparison was 9.5 days, and harvest dates were registered in the Sentinel-2 based maps 2 days (median) after the dates registered in the reference dataset. These results highlight the feasibility of mapping harvest dates in cereal fields with time series of high-resolution satellite imagery and expose the potential use of alternative sources of calibration and validation datasets for Earth observation products. More generally, these results contribute to defining plausible targets for monitoring of agricultural practices with Earth observation data.

Keywords: Sentinel-2; harvest date; RTK positioning (search for similar items in EconPapers)
JEL-codes: Q1 Q10 Q11 Q12 Q13 Q14 Q15 Q16 Q17 Q18 (search for similar items in EconPapers)
Date: 2025
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