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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ASSESSMENT OF RGB AND HYPERSPECTRAL UAV REMOTE SENSING FOR GRASS QUANTITY AND QUALITY ESTIMATION
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ASSESSMENT OF RGB AND HYPERSPECTRAL UAV REMOTE SENSING FOR GRASS QUANTITY AND QUALITY ESTIMATION

机译:RGB和高光谱无人机遥感评估用于草的数量和质量估计

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The information on the grass quantity and quality is needed for several times in a growing season for making optimal decisions about the harvesting time and the fertiliser rate, especially in northern countries, where grass swards quality declines and yield increases rapidly in the primary growth. We studied the potential of UAV-based photogrammetry and spectral imaging in grass quality and quantity estimation. To study this, a trial site with large variation in the quantity and quality parameters was established by using different nitrogen fertilizer application rates and harvesting dates. UAV-based remote sensing datasets were captured four times during the primary growth season in June 2017 and agricultural reference measurements including dry biomass and quality parameters, such as the digestibility (D-value) were collected simultaneously. The datasets were captured using a flying height of 50?m which provided a GSD of 0.7?cm for the photogrammetric imagery and 5?cm for the hyperspectral imagery. A rigorous photogrammetric workflow was carried out for all data sets aiming to determine the image exterior orientation parameters, camera interior orientation parameters, 3D point clouds and orthomosaics. The quantitative radiometric calibration included sensor corrections, atmospheric correction, and correction for the radiometric non-uniformities caused by illumination variations, BRDF correction and the absolute reflectance transformation. Random forest (RF) and multilinear regression (MLR) estimators were trained using spectral bands, vegetation indices and 3D features, extracted from the remote sensing datasets, and insitu reference measurements. From the FPI hyperspectral data, the 35 spectral bands and 11 spectral indices were used. The 3D features were extracted from the canopy height model (CHM) generated using RGB data. The most accurate results were obtained in the second measurement day (15th June) which was near to the optimal harvesting time and generally RF outperformed MLR slightly. When assessed with the leave-one-out-estimation, the best root mean squared error (RMSE%) were 8.9% for the dry biomass using 3D features. The best D-value estimation using RF algorithm (RMSE%?=?0.87%) was obtained using spectral features. Using the estimators, we then calculated grass quality and quantity maps covering the entire test site to compare different techniques and to evaluate the variability in the field. The results showed that the low-cost drone remote sensing gave excellent precision both for biomass and quality parameter estimation if accurately calibrated, offering an excellent tool for efficient and accurate management of silage grass production.
机译:在生长季节中,需要多次获得有关草数量和质量的信息,以便对收获时间和施肥量做出最佳决策,尤其是在北部国家,那里草皮草的质量下降且单产初期产量迅速增加。我们研究了基于无人机的摄影测量和光谱成像在草质和数量估计中的潜力。为了研究这一点,通过使用不同的氮肥施用量和收获日期,建立了数量和质量参数差异较大的试验地点。在2017年6月的主要生长季节中,基于无人机的遥感数据集被捕获了四次,同时收集了农业参考测量值,包括干生物量和质量参数,例如消化率(D值)。使用50?m的飞行高度捕获数据集,这为摄影测量图像提供了0.7?cm的GSD,为高光谱成像提供了5?cm的GSD。针对所有数据集执行了严格的摄影测量工作流程,旨在确定图像外部方向参数,相机内部方向参数,3D点云和正马赛克。定量辐射校准包括传感器校正,大气校正以及对由照度变化引起的辐射不均匀性的校正,BRDF校正和绝对反射率转换。使用光谱带,植被指数和3D特征对随机森林(RF)和多线性回归(MLR)估计量进行了训练,这些估计量是从遥感数据集中提取的,并进行了现场参考测量。从FPI高光谱数据中,使用了35个光谱带和11个光谱指数。从使用RGB数据生成的树冠高度模型(CHM)中提取了3D特征。在第二个测量日(6月15日)接近最佳收获时间,获得了最准确的结果,通常RF略胜于MLR。使用留一法估计进行评估时,使用3D特征的干燥生物质的最佳均方根误差(RMSE%)为8.9%。利用频谱特征获得使用RF算法的最佳D值估计(RMSE%≤0.87%)。然后,使用估算器,我们计算出覆盖整个测试地点的草质量和数量图,以比较不同的技术并评估田间的可变性。结果表明,低成本的无人机遥感如果进行了准确的校准,则可为生物量和质量参数估算提供出色的精度,为高效,准确地管理青贮草的生产提供了极好的工具。

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