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Leaf area index estimation in vineyards using a ground-based LiDAR scanner

机译:使用地面LiDaR扫描仪估算葡萄园的叶面积指数

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摘要

Estimation of grapevine vigour using mobile proximal sensors can provide an indirect method for determining grape yield and quality. Of the various indexes related to\udthe characteristics of grapevine foliage, the leaf area index (LAI) is probably the most widely used in viticulture. To assess the feasibility of using light detection and ranging (LiDAR) sensors for predicting the LAI, several field trials were performed using a tractormounted LiDAR system. This system measured the crop in a transverse direction along the rows of vines and geometric and structural parameters were computed. The parameters evaluated were the height of the vines (H), the cross-sectional area (A), the canopy volume (V) and the tree area index (TAI). This last parameter was formulated as the ratio of the crop estimated area per unit ground area, using a local Poisson distribution to approximate\udthe laser beam transmission probability within vines. In order to compare the calculated indexes with the actual values of LAI, the scanned vines were defoliated to obtain LAI values for different row sections. Linear regression analysis showed a good correlation (R2 = 0.81) between canopy volume and the measured values of LAI for 1 m long sections.\udNevertheless, the best estimation of the LAI was given by the TAI (R2 = 0.92) for the same length, confirming LiDAR sensors as an interesting option for foliage characterization of grapevines. However, current limitations exist related to the complexity of data process and to the need to accumulate a sufficient number of scans to adequately estimate the LAI.
机译:使用移动式近端传感器估算葡萄活力可提供确定葡萄产量和品质的间接方法。在与葡萄叶片特性有关的各种指标中,叶面积指数(LAI)可能是葡萄栽培中使用最广泛的。为了评估使用光检测和测距(LiDAR)传感器预测LAI的可行性,使用安装在拖拉机上的LiDAR系统进行了几次现场试验。该系统沿葡萄藤的横向在横向上测量农作物,并计算出几何和结构参数。评估的参数是葡萄树的高度(H),截面积(A),树冠体积(V)和树木面积指数(TAI)。最后一个参数用局部泊松分布近似估算葡萄藤中激光束的传播概率,公式为作物估计面积/单位地面面积的比率。为了将计算得出的指标与LAI的实际值进行比较,对扫描的葡萄树进行脱叶以获得不同行段的LAI值。线性回归分析显示,对于1 m长的断面,冠层体积与LAI的测量值之间具有良好的相关性(R2 = 0.81)。\ ud尽管如此,相同长度的TAI(R2 = 0.92)给出了LAI的最佳估计,证实了LiDAR传感器是用于葡萄树叶子表征的有趣选择。但是,当前存在的局限性与数据处理的复杂性以及需要积累足够数量的扫描以充分估计LAI的需求有关。

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