{rfName}

License and use

Licencia
Icono OpenAccess

Citations

Altmetrics

Grant support

This work was supported by the Spanish projects "HolisticWheat" (PID2022-138307OB-C21) , Ministerio de Ciencia e Innovacion, Spain and "DENSIPLANT" from the CERCA Center Agrotecnio, Generalitat de Catalunya, Spain J.J.-B. was supported by INVESTIGO 2022 program from Plan de Recuperacion, Transformacion y Resiliencia (NextGenerationEU) . Currently J.J.-B. is recipient of a FPI doctoral fellowship PREP2022000560 funded by MICIU/AEI/10.13039/501100011033 and FSE+. C.S.C. held a Maria Zambrano's fellowship from the University of Lleida funded by Spanish Ministry of Universities and the European Social Fundand currently is contracted by the project PID2021127415OB-I00 funded by AEI (State Research Agency of Spain) . S.C.K. is supported by the Ramon y Cajal RYC-2019-027818-I research fellowship from the Ministerio de Ciencia e Innovacion, MINECO, Spain. We also acknowledge the support from the Institut de Recerca de l'Aigua and the Universitat de Barcelona.

Analysis of institutional authors

Gracia-Romero, AdrianAuthorLopes, Marta Da SilvaAuthor

Share

April 22, 2025
Publications
>
Article

Winter wheat plant density determination: Robust predictions across varied agronomic conditions using multiscale RGB imaging

Publicated to:Smart Agricultural Technology. 11 100921- - 2025-08-01 11(), DOI: 10.1016/j.atech.2025.100921

Authors: Jauregui-Beso, Jara; Gracia-Romero, Adrian; Carrera, Constanza S; Lopes, Marta da Silva; Araus, Jose Luis; Kefauver, Shawn Carlisle

Affiliations

Cultius Extensius Sostenibles. Producció Vegetal - Author
IRTA Inst Food & Agr Res & Technol, Sustainable Field Crops Program, Lleida 25198, Spain - Author
Univ Barcelona, Fac Biol, Plant Physiol Sect, Integrat Crop Ecophysiol Grp,AGROTECNIO CERCA Ctr, Ave Diagonal 643, Barcelona 08028, Spain - Author
Univ Lleida, Dept Crop & Forest Sci, AGROTECNIO CERCA Ctr, Ave Rovira Roure 191, Lleida 25198, Spain - Author

Abstract

Cereal plant density is a crucial agronomic factor affecting resource management and yield. This study automated wheat density estimation using multiscale imaging from ground and Unmanned Aerial Vehicles (UAV) at 15, 30, and 50m Conducted over two agronomic seasons (2022 and 2023) with different water profiles, it analyzed three wheat genotypes (cv. Bologna, Hondia, and Marcopolo) sown at five densities ranging from 35 to 560 seeds m-2. Images collected through RGB sensors across Haun's developmental stages 2.6-12.2 provided data for calculating 15 Vegetation Indexes (VIs), which, along with their Principal Components (PCs), were used as inputs for Ridge and Principal Component Regression (PCR) models. Training was conducted on the 2022 datasets using 4-fold, 10-repeated cross-validation to determine the most predictive growth stages, with Haun stages 5.3 to 7.3 yielding the best results, irrespective of resolution. Testing on 2023 datasets showed that Ridge models consistently outperformed PCR, especially for medium to high-density ranges (140-560 seeds m-2), though they underperformed at lower densities, leading to their exclusion from the testing data. The top-performing Ridge model, trained on Haun stages 7.1-7.3 at 50 m (1.18 cm pixel-1), achieved Mean Absolute Percentage Error (MAPE) 17.91% - 28.54% (0.9-0.68 R2) values across various test sets, with stable performance throughout resolutions and stages (4.4-4.8). These findings show robust prediction capabilities across a broader developmental range and from the lowest resolution recorded, especially when vegetation coverage is abundant. The study highlights the practicality of high-throughput RGB imaging for scalable, flexible and affordable plant density estimation.

Keywords

Absolute error maeArea indexLeaf chlorophyll contentMachine learningMultiscale imagingPlant densityPopulation-densityRegressioRgb vegetation indicesSeeding densitySeedling emergenceSpring wheatTriticum-aestivumUavWheaYield components

Quality index

Bibliometric impact. Analysis of the contribution and dissemination channel

The work has been published in the journal Smart Agricultural Technology due to its progression and the good impact it has achieved in recent years, according to the agency WoS (JCR), it has become a reference in its field. In the year of publication of the work, 2025, it was in position 4/20, thus managing to position itself as a Q1 (Primer Cuartil), in the category Agricultural Engineering.

Impact and social visibility

From the perspective of influence or social adoption, and based on metrics associated with mentions and interactions provided by agencies specializing in calculating the so-called "Alternative or Social Metrics," we can highlight as of 2025-08-04:

  • The use of this contribution in bookmarks, code forks, additions to favorite lists for recurrent reading, as well as general views, indicates that someone is using the publication as a basis for their current work. This may be a notable indicator of future more formal and academic citations. This claim is supported by the result of the "Capture" indicator, which yields a total of: 3 (PlumX).

It is essential to present evidence supporting full alignment with institutional principles and guidelines on Open Science and the Conservation and Dissemination of Intellectual Heritage. A clear example of this is:

  • The work has been submitted to a journal whose editorial policy allows open Open Access publication.
  • Assignment of a Handle/URN as an identifier within the deposit in the Institutional Repository: http://hdl.handle.net/20.500.12327/3817