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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Machine learning estimators for the quantity and quality of grass swards used for silage production using drone-based imaging spectrometry and photogrammetry
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Machine learning estimators for the quantity and quality of grass swards used for silage production using drone-based imaging spectrometry and photogrammetry

机译:机器学习估计,用于使用基于无人机的成像光谱和摄影测量的青贮生产的草地草地的数量和质量

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Drones offer entirely new prospects for precision agriculture. This study investigates the utilisation of drone remote sensing for managing and monitoring silage grass swards. In northern countries, grass swards are fertilised and harvested three times per season when aiming to maximise the yield. Information about the grass quantity and quality is necessary to optimise these operations. Our objectives were to investigate and develop machine-learning techniques for estimating these parameters using drone photogrammetry and spectral imaging. Trial sites were established in southern Finland for the primary growth and regrowth of grass in the summer of 2017. Remote-sensing datasets were captured four times during the primary growth season and three times during the regrowth period. Reference measurements included fresh and dry biomass and several quality parameters, such as the digestibility of organic matter in dry matter (the D-value), neutral detergent fibre (NDF), indigestible neutral detergent fibre (iNDF), water-soluble carbohydrates (WSC), the nitrogen concentration (Ncont) in dry matter (DM) and nitrogen uptake (NU). Machine-learning estimators based on random forest (RF) and multiple linear regression (MLR) methods were trained using the reference measurements and tested using independent test datasets. The best results for the biomass estimation, nitrogen amount and digestibility were obtained when using hyperspectral and 3D data, followed by the combination of multispectral and 3D data. During the training process, the best normalised root-mean-square errors (RMSE%) were 14.66% for the dry biomass and 12% for fresh biomass; the best RMSE% values for NU, the D-value and NDF were 13.6%, 1.98% and 3% respectively. For the primary growth, the accuracies of all quality parameters were better than 20% with the independent test datasets; for the regrowth, the estimation accuracies of the D-value, iNDF, NDF, Ncont and NU were better than 20%. The results showed that drone remote sensing was an excellent tool for the efficient and accurate management of silage production.
机译:无人机为精密农业提供全新的前景。本研究调查了无人机遥感对管理和监测青贮草草地的利用。在北方国家,旨在最大限度地提高产量,草地草地被施肥和收获三次。有关草数量和质量的信息是优化这些操作的必要条件。我们的目标是调查和开发使用寄生虫摄影测量和光谱成像来估算这些参数的机器学习技术。 2017年夏季,在芬兰南部建立了试验网站,在2017年夏天的主要增长和再生。在初级生长季期间捕获了四次的遥感数据集,在再生期间三次。参考测量包括新鲜干燥的生物质和几种质量参数,例如干物质中有机物质的消化率(D值),中性洗涤剂纤维(NDF),难以致力于中性洗涤剂纤维(Indf),水溶性碳水化合物(WSC ),干物质(DM)中的氮浓度(ncont)和氮气吸收(nu)。使用基于随机森林(RF)和多元线性回归(MLR)方法的机器学习估计使用参考测量和使用独立的测试数据集进行测试。当使用超细光谱和3D数据时,获得了生物量估计,氮气量和消化率的最佳结果,然后获得多光谱和3D数据的组合。在训练过程中,干生物量的最佳归一化的根均方误差(RMSE%)为14.66%,新生物量为12%; Nu,D值和NDF的最佳RMSE%值分别为13.6%,1.98%和3%。对于主要的生长,所有质量参数的精度优于20%,与独立的测试数据集优于20%;为了再生,D值,Indf,NDF,Ncont和Nu的估计精度优于20%。结果表明,无人机遥感是一种绝佳的青贮生产管理的绝佳工具。

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