Herbage biomass predictions from UAV data using a derived digital terrain model and machine learning

IF 2.7 3区 农林科学 Q1 AGRONOMY
Philippe Aebischer, Michael Sutter, Amy Birkinshaw, Madlene Nussbaum, Beat Reidy
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引用次数: 0

Abstract

More than 70% of Switzerland's agricultural area is covered by grasslands that often exhibit highly diverse species compositions and heterogeneous growth patterns. An essential requirement for efficient and effective pasture management is the regular estimation of herbage biomass. While various methods exist for estimating herbage biomass, they are often time-consuming and may not accurately capture the variability within pastures. This highlights the need for more efficient, accurate estimation techniques. To help improve herbage biomass estimation, we present estiGrass3D+, a Random Forest model. This model predicts pasture biomass using a digital terrain model (DTM) derived from a digital surface model (DSM) for sward height modelling, along with vegetation indices and agronomic variables from UAV images only. The model was successfully evaluated with independent test data from different sites on the Swiss central plateau, including both grazed and mown areas. Model performance on an independent validation dataset achieved a NRMSE of 20.3%, while the training dataset had an NRMSE of 21.5%. These consistent results confirm that estiGrass3D+ is both transferable and applicable to unseen data while maintaining accuracy and reliability across different datasets. The wide applicability of our method demonstrates its practicality for predicting herbage biomass under different pasture management scenarios. Additionally, our method of deriving a DTM directly from a DSM simplifies the measurement of grass sward height by UAVs, eliminating the need for prior ground control point (GCP) marking and subsequent aligning, enhancing the efficiency of herbage biomass estimation.

Abstract Image

利用衍生数字地形模型和机器学习从无人机数据中预测垃圾生物量
瑞士70%以上的农业面积被草原覆盖,这些草原往往表现出高度多样化的物种组成和异质的生长模式。牧草生物量的定期估算是草场高效管理的基本要求。虽然存在各种估算牧草生物量的方法,但它们往往耗时且可能无法准确捕获牧场内的变化。这突出了对更有效、更准确的评估技术的需求。为了更好地估算牧草生物量,我们提出了一个随机森林模型estiGrass3D+。该模型使用数字地形模型(DTM)来预测牧草生物量,该模型来源于用于草地高度建模的数字表面模型(DSM),以及仅来自无人机图像的植被指数和农艺变量。利用瑞士中部高原不同地点(包括放牧区和刈割区)的独立测试数据成功地对该模型进行了评估。模型在独立验证数据集上的NRMSE为20.3%,而训练数据集的NRMSE为21.5%。这些一致的结果证实了estiGrass3D+既可转移又适用于未见过的数据,同时在不同数据集之间保持准确性和可靠性。该方法的广泛适用性证明了其在不同草场管理情景下预测牧草生物量的实用性。此外,我们的方法直接从DSM中获得DTM,简化了无人机对草地高度的测量,消除了预先标记地面控制点(GCP)和随后对准的需要,提高了牧草生物量估算的效率。
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来源期刊
Grass and Forage Science
Grass and Forage Science 农林科学-农艺学
CiteScore
5.10
自引率
8.30%
发文量
37
审稿时长
12 months
期刊介绍: Grass and Forage Science is a major English language journal that publishes the results of research and development in all aspects of grass and forage production, management and utilization; reviews of the state of knowledge on relevant topics; and book reviews. Authors are also invited to submit papers on non-agricultural aspects of grassland management such as recreational and amenity use and the environmental implications of all grassland systems. The Journal considers papers from all climatic zones.
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