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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EVALUATION OF RGB-BASED VEGETATION INDICES FROM UAV IMAGERY TO ESTIMATE FORAGE YIELD IN GRASSLAND
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EVALUATION OF RGB-BASED VEGETATION INDICES FROM UAV IMAGERY TO ESTIMATE FORAGE YIELD IN GRASSLAND

机译:基于RGB影像的无人机影像估算草地牧草产量。

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Monitoring forage yield throughout the growing season is of key importance to support management decisions on grasslands/pastures. Especially on intensely managed grasslands, where nitrogen fertilizer and/or manure are applied regularly, precision agriculture applications are beneficial to support sustainable, site-specific management decisions on fertilizer treatment, grazing management and yield forecasting to mitigate potential negative impacts. To support these management decisions, timely and accurate information is needed on plant parameters (e.g. forage yield) with a high spatial and temporal resolution. However, in highly heterogeneous plant communities such as grasslands, assessing their in-field variability non-destructively to determine e.g. adequate fertilizer application still remains challenging. Especially biomass/yield estimation, as an important parameter in assessing grassland quality and quantity, is rather laborious. Forage yield (dry or fresh matter) is mostly measured manually with rising plate meters (RPM) or ultrasonic sensors (handheld or mounted on vehicles). Thus the in-field variability cannot be assessed for the entire field or only with potential disturbances. Using unmanned aerial vehicles (UAV) equipped with consumer grade RGB cameras in-field variability can be assessed by computing RGB-based vegetation indices. In this contribution we want to test and evaluate the robustness of RGB-based vegetation indices to estimate dry matter forage yield on a recently established experimental grassland site in Germany. Furthermore, the RGB-based VIs are compared to indices computed from the Yara N-Sensor. The results show a good correlation of forage yield with RGB-based VIs such as the NGRDI with Rsup2/sup values of 0.62.
机译:在整个生长期监测草料产量对于支持草原/草场的管理决策至关重要。尤其是在经常使用氮肥和/或肥料的高强度管理草原上,精准农业应用有利于支持针对肥料处理,放牧管理和产量预测的可持续,针对特定地点的管理决策,以减轻潜在的负面影响。为了支持这些管理决策,需要具有高时空分辨率的植物参数(例如牧草产量)的及时,准确的信息。但是,在高度异质的植物群落(例如草原)中,可以非破坏性地评估其田间变异性,从而确定例如充足的肥料施用仍然具有挑战性。尤其是,生物量/产量估计作为评估草地质量和数量的重要参数非常费力。饲草产量(干或新鲜物质)大部分是通过上升平板仪表(RPM)或超声波传感器(手持式或安装在车辆上)手动测量的。因此,不能针对整个场或仅在潜在干扰的情况下评估场内变异性。使用配备了消费级RGB相机的无人机(UAV),可以通过计算基于RGB的植被指数来评估野外变化。在此贡献中,我们要测试和评估基于RGB的植被指数的稳健性,以估计德国最近建立的实验性草地站点上的干物质草料产量。此外,将基于RGB的VI与从Yara N传感器计算出的索引进行比较。结果表明,饲草产量与基于RGB的VI(例如NGRDI,R 2 值为0.62)具有良好的相关性。

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