Multiscale assessment of ground, aerial and satellite spectral data for monitoring wheat grain nitrogen content

Joel Segarra,Fatima Zahra Rezzouk, Nieves Aparicio,Jon Gonzalez-Torralba, Iker Aranjuelo,Adrian Gracia-Romero, Jose Luis Araus,Shawn C. Kefauver

INFORMATION PROCESSING IN AGRICULTURE(2023)

引用 3|浏览8
暂无评分
摘要
Wheat grain quality characteristics have experienced increasing attention as a central fac-tor affecting wheat end-use products quality and human health. Nonetheless, in the last decades a reduction in grain quality has been observed. Therefore, it is central to develop efficient quality-related phenotyping tools. In this sense, one of the most relevant wheat features related to grain quality traits is grain nitrogen content, which is directly linked to grain protein content and monitorable with remote sensing approaches. Moreover, the relation between nitrogen fertilization and grain nitrogen content (protein) plays a central role in the sustainability of agriculture. Both aiming to develop efficient phenotyping tools using remote sensing instruments and to advance towards a field-level efficient and sus-tainable monitoring of grain nitrogen status, this paper studies the efficacy of various sen-sors, multispectral and visible red-greenblue (RGB), at different scales, ground and unmanned aerial vehicle (UAV), and phenological stages (anthesis and grain filling) to esti-mate grain nitrogen content. Linear models were calculated using vegetation indices at each sensing level, sensor type and phenological stage. Furthermore, this study explores the up-scalability of the best performing model to satellite level Sentinel-2 equivalent data. We found that models built at the phenological stage of anthesis with UAV-level multispec-tral cameras using red-edge bands outperformed grain nitrogen content estimation (R2 = 0.42, RMSE = 0.18%) in comparison with those models built with RGB imagery at ground and aerial level, as well as with those built with widely used ground-level multi -spectral sensors. We also demonstrated the possibility to use UAV-built multispectral linear models at the satellite scale to determine grain nitrogen content effectively (R2 = 0.40, RMSE = 0.29%) at actual wheat fields.
更多
查看译文
关键词
Wheat,Remote sensing,Sentinel-2,Grain nitrogen content,Phenotyping
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要