Winter wheat plant density determination: Robust predictions across varied agronomic conditions using multiscale RGB imaging
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Publication date
2025-03-29ISSN
2772-3755
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.
Document Type
Article
Document version
Published version
Language
English
Subject (CDU)
633 - Field crops and their production
Pages
16
Publisher
Elsevier
Is part of
Smart Agricultural Technology
Recommended citation
Jauregui-Besó, Jara, Adrian Gracia-Romero, Constanza S. Carrera, Marta Da Silva Lopes, José Luis Araus, and Shawn Carlisle Kefauver. 2025. “Winter wheat plant density determination: Robust predictions across varied agronomic conditions using multiscale RGB imaging.” Smart Agricultural Technology, March, 100921. https://doi.org/10.1016/j.atech.2025.100921.
Grant agreement number
MICINN/Programa Estatal para impulsar la investigación científico-técnica y su transferencia/PID2022-138307OB-C21/ES/Fenotipado holístico del trigo: Ideotipo a nivel de cultivo y fusión de tecnologías de sensores/HolisticWheat
MICINN/Programa Estatal para impulsar la investigación científico-técnica y su transferencia/PID2021-127415OB-I00/ES/Fertilidad de espigas en trigo: Rol de genes promisorios, variabilidad en material élite, plasticidad y compensaciones/
MICIU/Programa Estatal de promoción del talento y su empleabilidad en I+D+I/RYC2019-027818-I/ES/ /
Program
Cultius Extensius Sostenibles
This item appears in the following Collection(s)
- ARTICLES CIENTÍFICS [3467]
Except where otherwise noted, this item's license is described as http://creativecommons.org/licenses/by-nc/4.0/


