Grassland Science and Renewable Plant Resources, Organic Agricultural Sciences, Universität Kassel, Witzenhausen, Germany.
PLoS One. 2020 Jun 25;15(6):e0234703. doi: 10.1371/journal.pone.0234703. eCollection 2020.
Organic farmers, who rely on legumes as an external nitrogen (N) source, need a fast and easy on-the-go measurement technique to determine harvestable biomass and the amount of fixed N (NFix) for numerous farm management decisions. Especially clover- and lucerne-grass mixtures play an important role in the organic crop rotation under temperate European climate conditions. Multispectral sensors mounted on unmanned aerial vehicles (UAVs) are new promising tools for a non-destructive assessment of crop and grassland traits on large and remote areas. One disadvantage of multispectral information and derived vegetations indices is, that both ignore spatial relationships of pixels to each other in the image. This gap can be filled by texture features from a grey level co-occurrence matrix. The aim of this multi-temporal field study was to provide aboveground biomass and NFix estimation models for two legume-grass mixtures through a whole vegetation period based on UAV multispectral information. The prediction models covered different proportions of legumes (0-100% legumes) to represent the variable conditions in practical farming. Furthermore, the study compared prediction models with and without the inclusion of texture features. As multispectral data usually suffers from multicollinearity, two machine learning algorithms, Partial Least Square and Random Forest (RF) regression, were used. The results showed, that biomass prediction accuracy for the whole dataset as well as for crop-specific models were substantially improved by the inclusion of texture features. The best model was generated for the whole dataset by RF with an rRMSE of 10%. For NFix prediction accuracy of the best model was based on RF including texture (rRMSEP = 18%), which was not consistent with crop specific models.
有机农民依赖豆类作为外部氮 (N) 源,他们需要一种快速、简便的现场测量技术,以便在众多农场管理决策中确定可收获的生物量和固定氮 (NFix) 的数量。特别是三叶草和紫花苜蓿草的混合物在温带欧洲气候条件下的有机作物轮作中起着重要作用。安装在无人驾驶飞行器 (UAV) 上的多光谱传感器是一种用于非破坏性评估大面积和偏远地区作物和草原特征的新的有前途的工具。多光谱信息和衍生植被指数的一个缺点是,两者都忽略了图像中像素之间的空间关系。这一差距可以通过灰度共生矩阵的纹理特征来填补。本多时间野外研究的目的是通过基于 UAV 多光谱信息的整个植被期,为两种豆科-草类混合物提供地上生物量和 NFix 估算模型。预测模型涵盖了不同比例的豆类(0-100%的豆类),以代表实际农业中的可变条件。此外,该研究还比较了包含和不包含纹理特征的预测模型。由于多光谱数据通常存在多重共线性问题,因此使用了两种机器学习算法,偏最小二乘法和随机森林 (RF) 回归。结果表明,通过包含纹理特征,整个数据集以及针对特定作物的模型的生物量预测准确性都得到了大幅提高。通过 RF 生成的整个数据集的最佳模型的 rRMSE 为 10%。对于 NFix 预测,基于包含纹理的 RF 的最佳模型的准确性(rRMSEP = 18%)与特定作物的模型不一致。