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Yield estimation in cotton using UAV-based multi-sensor imagery

机译:基于UV基多传感器图像的棉花产量估计

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Monitoring crop development and accurately estimating crop yield are important to improve field management and crop production. This study aimed to evaluate the performance of an unmanned aerial vehicle (UAV)-based remote sensing system in cotton yield estimation. A UAV system, equipped with an RGB camera, a multispectral camera, and an infrared thermal camera, was used to acquire images of a cotton field at two growth stages (flowering growth stage and shortly before harvest). Sequential images from the three cameras were processed to generate orthomosaic images and a digital surface model (DSM), which were registered to the georeferenced yield data acquired by a yield monitor mounted on a harvester. Eight image features were extracted, including normalised difference vegetation index (NDVI), green normalised difference vegetation index (GNDVI), triangular greenness index (TGI), a channel in CIE-LAB colour space (a*), canopy cover, plant height (PH), canopy temperature, and cotton fibre index (CFI). Models were developed to evaluate the accuracy of each image feature for yield estimation. Results show that PH and CFI were the best single features for cotton yield estimation, both with R-2 = 0.90. The combination of PH and CFI, PH and a*, or PH and temperature were the best two-feature models with R-2 from 0.92 to 0.94. The best three-feature models were among the combinations of PH, CFI, temperature and a*. This study found that UAV-based images collected during the flowering growth stage and/or shortly before harvest were able to estimate cotton yield accurately. (C) 2020 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:监测作物发展和准确估算作物产量对于改善现场管理和作物生产非常重要。本研究旨在评估棉花产量估计中无人机(UAV)的遥感系统的性能。使用RGB摄像头,多光谱相机和红外热摄像机的UAV系统用于在两个生长阶段(开花生长阶段,并且在收获前不久)获取棉田的图像。处理来自三个摄像机的顺序图像以产生正交图像和数字表面模型(DSM),该数字表面模型(DSM)被登记到由安装在收割机上的产量监视器获取的地理参考产量数据。提取八种图像特征,包括归一化差异植被指数(NDVI),绿色归一化差异植被指数(GNDVI),三角形绿色指数(TGI),CIE-LAB颜色空间(A *),遮篷覆盖,植物高度( pH),冠层温度和棉纤维指数(CFI)。开发模型以评估每个图像特征的准确性,以获得收益率估计。结果表明,pH和CFI是棉花产量估计的最佳单位特征,无论是R-2 = 0.90。 pH和CFI,pH和a *,pH和pH和温度的组合是具有r-2的最佳双特征模型,从0.92到0.94。最好的三个特征模型是pH,CFI,温度和A *的组合之一。本研究发现,在开花生长阶段和/或在收获之前的基于UAV的图像能够准确估计棉花产量。 (c)2020 IAGRE。 elsevier有限公司出版。保留所有权利。

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