Ferreira Leilson, Sousa Joaquim J, Lourenço José M, Peres Emanuel, Morais Raul, Pádua Luís
Department of Agronomy, School of Agrarian and Veterinary Sciences, University of Trás-os-Montes e Alto Douro, 5000-801 Vila Real, Portugal.
Centre for the Research and Technology of Agro-Environmental and Biological Sciences, University of Trás-os-Montes e Alto Douro, 5000-801 Vila Real, Portugal.
Sensors (Basel). 2024 Aug 11;24(16):5183. doi: 10.3390/s24165183.
Understanding geometric and biophysical characteristics is essential for determining grapevine vigor and improving input management and automation in viticulture. This study compares point cloud data obtained from a Terrestrial Laser Scanner (TLS) and various UAV sensors including multispectral, panchromatic, Thermal Infrared (TIR), RGB, and LiDAR data, to estimate geometric parameters of grapevines. Descriptive statistics, linear correlations, significance using the F-test of overall significance, and box plots were used for analysis. The results indicate that 3D point clouds from these sensors can accurately estimate maximum grapevine height, projected area, and volume, though with varying degrees of accuracy. The TLS data showed the highest correlation with grapevine height ( = 0.95, < 0.001; = 0.90; RMSE = 0.027 m), while point cloud data from panchromatic, RGB, and multispectral sensors also performed well, closely matching TLS and measured values ( > 0.83, < 0.001; > 0.70; RMSE < 0.084 m). In contrast, TIR point cloud data performed poorly in estimating grapevine height ( = 0.76, < 0.001; = 0.58; RMSE = 0.147 m) and projected area ( = 0.82, < 0.001; = 0.66; RMSE = 0.165 m). The greater variability observed in projected area and volume from UAV sensors is related to the low point density associated with spatial resolution. These findings are valuable for both researchers and winegrowers, as they support the optimization of TLS and UAV sensors for precision viticulture, providing a basis for further research and helping farmers select appropriate technologies for crop monitoring.
了解葡萄树的几何和生物物理特性对于确定葡萄树活力以及改善葡萄栽培中的投入管理和自动化至关重要。本研究比较了从地面激光扫描仪(TLS)和各种无人机传感器(包括多光谱、全色、热红外(TIR)、RGB和激光雷达数据)获得的点云数据,以估计葡萄树的几何参数。使用描述性统计、线性相关性、基于整体显著性F检验的显著性以及箱线图进行分析。结果表明,这些传感器的三维点云能够准确估计葡萄树的最大高度、投影面积和体积,尽管精度程度有所不同。TLS数据与葡萄树高度的相关性最高( = 0.95, < 0.001; = 0.90;RMSE = 0.027米),而全色、RGB和多光谱传感器的点云数据也表现良好,与TLS和测量值紧密匹配( > 0.83, < 0.001; > 0.70;RMSE < 0.084米)。相比之下,TIR点云数据在估计葡萄树高度( = 0.76, < 0.001; = 0.58;RMSE = 0.147米)和投影面积( = 0.82, < 0.001; = 0.66;RMSE = 0.165米)方面表现不佳。无人机传感器在投影面积和体积方面观察到的较大变异性与空间分辨率相关的低点密度有关。这些发现对研究人员和葡萄种植者都很有价值,因为它们支持为精准葡萄栽培优化TLS和无人机传感器,为进一步研究提供基础,并帮助农民选择合适的技术进行作物监测。