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Applications of Unmanned Aerial Vehicle Based Imagery in Turfgrass Field Trials

机译:基于无人机的影像技术在草坪草田间试验中的应用

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Recent advances in remote sensing technology, especially in the area of Unmanned Aerial Vehicles (UAV) and Unmanned Aerial Systems (UASs) provide opportunities for turfgrass breeders to collect more comprehensive data during early stages of selection as well as in advanced trials. The goal of this study was to assess the use of UAV-based aerial imagery on replicated turfgrass field trials. Both visual (RGB) images and multispectral images were acquired with a small UAV platform on field trials of bermudagrass ( Cynodon spp.) and zoysiagrass ( Zoysia spp.) with plot sizes of 1.8 by 1.8 m and 0.9 by 0.9 m, respectively. Color indices and vegetation indices were calculated from the data extracted from UAV-based RGB images and multispectral images, respectively. Ground truth measurements including visual turfgrass quality, percent green cover, and normalized difference vegetation index (NDVI) were taken immediately following each UAV flight. Results from the study showed that ground-based NDVI can be predicted using UAV-based NDVI ( R ~(2) = 0.90, RMSE = 0.03). Ground percent green cover can be predicted using both UAV-based NDVI ( R ~(2) = 0.86, RMSE = 8.29) and visible atmospherically resistant index (VARI, R ~(2) = 0.87, RMSE = 7.77), warranting the use of the more affordable RGB camera to estimate ground percent green cover. Out of the top ten entries identified using ground measurements, 92% (12 out of 13 in bermudagrass) and 80% (9 out of 11 in zoysiagrass) overlapped with those using UAV-based imagery. These results suggest that UAV-based high-resolution imagery is a reliable and powerful tool for assessing turfgrass performance during variety trials.
机译:遥感技术的最新进展,尤其是在无人机(UAV)和无人机系统(UASs)领域,为草皮育种者提供了在选择的早期阶段以及在高级试验中收集更全面数据的机会。这项研究的目的是评估在复制的草皮草野外试验中基于无人机的航空影像的使用。视觉(RGB)图像和多光谱图像都是通过小型无人机平台在百慕大(Cynodon spp。)和zoysiagrass(Zoysia spp。)的田间试验中获得的,样地尺寸分别为1.8 x 1.8 m和0.9 x 0.9 m。分别从基于无人机的RGB图像和多光谱图像中提取的数据计算颜色指数和植被指数。每次无人机飞行后,立即进行地面实况测量,包括视觉草皮质量,绿化率百分比和归一化植被指数(NDVI)。研究结果表明,可以使用基于无人机的NDVI来预测基于地面的NDVI(R〜(2)= 0.90,RMSE = 0.03)。可以使用基于UAV的NDVI(R〜(2)= 0.86,RMSE = 8.29)和可见的大气阻力指数(VARI,R〜(2)= 0.87,RMSE = 7.77)来预测地面绿色覆盖率更便宜的RGB相机来估算地面绿色覆盖率。在通过地面测量确定的前十个条目中,有92%(百慕大草中的12个中有12个)和80%(zoysiagrass中11个中的9个)与基于UAV的图像重叠。这些结果表明,基于无人机的高分辨率图像是评估品种试验期间草皮草性能的可靠而强大的工具。

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