首页> 外文期刊>Transactions of the ASABE >COTTON YIELD ESTIMATION FROM UAV-BASED PLANT HEIGHT
【24h】

COTTON YIELD ESTIMATION FROM UAV-BASED PLANT HEIGHT

机译:棉花产量估计从无人机的植物高度

获取原文
获取原文并翻译 | 示例
           

摘要

Accurate estimation of crop yield before harvest, especially in early growth stages, is important for farmers and researchers to optimize field management and evaluate crop performance. However, existing in-field methods for estimating crop yield are not efficient. The goal of this research was to evaluate the performance of a UAV-based remote sensing system with a low-cost RGB camera to estimate cotton yield based on plant height. The UAV system acquired images at 50 m above ground level over a cotton field at the first flower growth stage. Waypoints and flight speed were selected to allow >70% image overlap in both forward and side directions. Images were processed to develop a geo-referenced orthomosaic image and a digital elevation model (DEM) of the field that was used to extract plant height by calculating the difference in elevation between the crop canopy and bare soil surface. Twelve ground reference points with known height were deployed in the field to validate the UAV-based height measurement. Geo-referenced yield data were aligned to the plant height map based on GPS and image features. Correlation analysis between yield and plant height was conducted row-by-row with and without row registration. Pearson correlation coefficients between yield and plant height with row registration for all individual rows were in the range of 0.66 to 0.96 and were higher than those without row registration (0.54 to 0.95). A linear regression model using plant height was able to estimate yield with root mean square error of 550 kg ha(-1) and mean absolute error of 420 kg ha(-1). Locations with low yield were analyzed to identify the potential reasons, and it was found that water stress and coarse soil texture, as indicated by low soil apparent electricity conductivity (ECa), might contribute to the low yield. The findings indicate that the UAV-based remote sensing system equipped with a low-cost digital camera was potentially able to monitor plant growth status and estimate cotton yield with acceptable errors.
机译:准确估算收获前的作物产量,特别是在早期的增长阶段,对农民和研究人员来说是重要的,以优化现场管理和评估作物表现。然而,估计作物产量的现有现场方法是不效益的。本研究的目标是评估一种基于UV的遥感系统的性能,具有低成本的RGB摄像机,以估计基于植物高度的棉花产量。 UAV系统在第一花生长阶段的棉田上以50米处的地面上以50米获取的图像。选择航点和飞行速度以允许在前向和侧方向上允许> 70%的图像重叠。处理图像以通过计算作物冠层和裸露的土壤表面之间的升高差异来开发用于提取植物高度的地理参考的正交图像和数字高度模型(DEM)。在该字段中部署了具有已知高度的12个接地参考点以验证基于UV的高度测量。地理参考产量数据基于GPS和图像特征对齐到工厂高度图。产量和植物高度之间的相关性分析逐行进行,没有行登记。所有单行行的产量和植物高度之间的Pearson相关系数在0.66至0.96的范围内,高于没有行向登记的(0.54至0.95)。使用植物高度的线性回归模型能够估计550 kg ha(-1)的根均方误差的产量,并且平均420kg ha(-1)的绝对误差。分析低产率的位置以鉴定潜在的原因,发现水分应激和粗糙的土壤质地,如低土表观电导率(ECA)所示,可能导致低产率。调查结果表明,配备有低成本数码相机的无人机的遥感系统可能能够监测植物生长状态,并以可接受的误差估算棉花产量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号