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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >POTENTIAL OF NON-CALIBRATED UAV-BASED RGB IMAGERY FOR FORAGE MONITORING: CASE STUDY AT THE RENGEN LONG-TERM GRASSLAND EXPERIMENT (RGE), GERMANY
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POTENTIAL OF NON-CALIBRATED UAV-BASED RGB IMAGERY FOR FORAGE MONITORING: CASE STUDY AT THE RENGEN LONG-TERM GRASSLAND EXPERIMENT (RGE), GERMANY

机译:基于非校准无人机的RGB影像的潜力,用于牧草监测:以德国伦根长期草原实验(RGE)为例

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Forage monitoring in grassland is an important task to support management decisions. Spatial data on (i) yield,(ii) quality, and (iii) floristic composition are of interest. The spatio-temporal variability in grasslands is significant and requires fast and low-cost methods for data delivery. Therefore, the overarching aim of this contribution is the investigation of low-cost and non-calibrated UAV-derived RGB imagery for forage monitoring. Study area is the Rengen Grassland Experiment (RGE) in Germany which is a long-term field experiment since 1941. Due to the experiment layout, destructive biomass sampling during the growing period was not possible. Hence, non-destructive Rising Plate Meter (RPM) measurements, which are a common method to estimate biomass in grasslands, were carried out. UAV campaigns with a Canon Powershot 110 mounted on a DJI Phantom 2 were conducted in the first growing season in 2014. From the RGB imagery, the RGB vegetation index (RGBVI) and the Grassland Index (GrassI) introduced by Bendig et al. (2015) and Bareth et al. (2015), respectively, were computed. The RGBVI and the GrassI perform very well against the RPM measurements resulting in Rsup2/sup of 0.84 and 0.9, respectively. These results indicate the potential of low-cost UAV methods for grassland monitoring and correspond well to the studies of Viljanen et al. (2018) and N?si et al. (2018).
机译:草原的牧草监测是支持管理决策的重要任务。有关(i)产量,(ii)品质和(iii)植物组成的空间数据令人关注。草原的时空变化很大,需要快速低成本的数据传递方法。因此,这项贡献的首要目标是研究低成本和未经校准的,源自无人机的RGB图像,以进行草料监测。研究区域是德国的伦根草原实验(RGE),这是自1941年以来的一项长期野外实验。由于实验布局的原因,无法在生长期对生物量进行破坏性采样。因此,进行了无损上升平板仪(RPM)测量,这是估算草地生物量的常用方法。在2014年的第一个生长季节,进行了将佳能Powershot 110安装在DJI Phantom 2上的无人机运动。根据RGB图像,由Bendig等人介绍的RGB植被指数(RGBVI)和草地指数(GrassI)。 (2015)和Bareth等。 (2015),分别进行了计算。 RGBVI和GrassI对RPM测量的表现非常好,导致R 2 分别为0.84和0.9。这些结果表明了低成本无人机方法在草地监测中的潜力,并且与Viljanen等人的研究非常吻合。 (2018)和N?si等。 (2018)。

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