High Throughput Field Phenotyping of Wheat Plant Height and Growth Rate in Field Plot Trials Using UAV Based Remote Sensing
Fenner Howard Holman,Andrew B. Riche,Adam Michalski,March Castle,Martin J. Wooster,Malcolm J. Hawkesford +5 more
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TL;DR: This study proves UAV based SfM has the potential to become a new standard for high-throughput phenotyping of in-field crop heights and provides a novel spatial mapping of crop height variation both at the field scale and also within individual plots.
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Abstract: There is a growing need to increase global crop yields, whilst minimising use of resources such as land, fertilisers and water. Agricultural researchers use ground-based observations to identify, select and develop crops with favourable genotypes and phenotypes; however, the ability to collect rapid, high quality and high volume phenotypic data in open fields is restricting this. This study develops and assesses a method for deriving crop height and growth rate rapidly from multi-temporal, very high spatial resolution (1 cm/pixel), 3D digital surface models of crop field trials produced via Structure from Motion (SfM) photogrammetry using aerial imagery collected through repeated campaigns flying an Unmanned Aerial Vehicle (UAV) with a mounted Red Green Blue (RGB) camera. We compare UAV SfM modelled crop heights to those derived from terrestrial laser scanner (TLS) and to the standard field measurement of crop height conducted using a 2 m rule. The most accurate UAV-derived surface model and the TLS both achieve a Root Mean Squared Error (RMSE) of 0.03 m compared to the existing manual 2 m rule method. The optimised UAV method was then applied to the growing season of a winter wheat field phenotyping experiment containing 25 different varieties grown in 27 m2 plots and subject to four different nitrogen fertiliser treatments. Accuracy assessments at different stages of crop growth produced consistently low RMSE values (0.07, 0.02 and 0.03 m for May, June and July, respectively), enabling crop growth rate to be derived from differencing of the multi-temporal surface models. We find growth rates range from −13 mm/day to 17 mm/day. Our results clearly display the impact of variable nitrogen fertiliser rates on crop growth. Digital surface models produced provide a novel spatial mapping of crop height variation both at the field scale and also within individual plots. This study proves UAV based SfM has the potential to become a new standard for high-throughput phenotyping of in-field crop heights.
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TL;DR: In this paper, the authors present the agronomical variables and plant traits that can be estimated by remote sensing, and describe the empirical and deterministic approaches to retrieve them, and provide a synthesis of the emerging opportunities that should strengthen the role of remote sensing in providing operational, efficient and long-term services for agricultural applications.
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Unmanned Aerial Vehicle Remote Sensing for Field-Based Crop Phenotyping: Current Status and Perspectives
Guijun Yang,Jiangang Liu,Chunjiang Zhao,Zhenhong Li,Yanbo Huang,Yu Haiyang,Bo Xu,Xiaodong Yang,Dongmei Zhu,Xiaoyan Zhang,Ruyang Zhang,Haikuan Feng,Zhao Xiaoqing,Zhenhai Li,Heli Li,Hao Yang +15 more
TL;DR: The current status and perspectives on the topic of UAV-RSPs for field-based phenotyping were reviewed and can provide theoretical and technical support to promote the applications of Uav-R SPs for crop phenotypesing.
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Drones in agriculture: A review and bibliometric analysis
TL;DR: In this article , the authors conduct a comprehensive review based on bibliometrics to summarize and structure existing academic literature and reveal current research trends and hotspots, which indicates that remote sensing, precision agriculture, deep learning, machine learning, and the Internet of Things are critical topics related to agricultural drones.
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Above-ground biomass estimation and yield prediction in potato by using UAV-based RGB and hyperspectral imaging
Bo Li,Bo Li,Xiangming Xu,Li Zhang,Jiwan Han,Chunsong Bian,Guangcun Li,Jiangang Liu,Liping Jin +8 more
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