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A Canopy Information Measurement Method for Modern Standardized Apple Orchards Based on UAV Multimodal Information

机译:基于无人机多模态信息的现代标准化苹果园冠层信息测量方法

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摘要

To make canopy information measurements in modern standardized apple orchards, a method for canopy information measurements based on unmanned aerial vehicle (UAV) multimodal information is proposed. Using a modern standardized apple orchard as the study object, a visual imaging system on a quadrotor UAV was used to collect canopy images in the apple orchard, and three-dimensional (3D) point-cloud models and vegetation index images of the orchard were generated with Pix4Dmapper software. A row and column detection method based on grayscale projection in orchard index images (RCGP) is proposed. Morphological information measurements of fruit tree canopies based on 3D point-cloud models are established, and a yield prediction model for fruit trees based on the UAV multimodal information is derived. The results are as follows: (1) When the ground sampling distance (GSD) was 2.13–6.69 cm/px, the accuracy of row detection in the orchard using the RCGP method was 100.00%. (2) With RCGP, the average accuracy of column detection based on grayscale images of the normalized green (NG) index was 98.71–100.00%. The hand-measured values of , , and of the fruit tree canopy were compared with those obtained with the UAV. The results showed that the coefficient of determination was the most significant, which was 0.94, 0.94, and 0.91, respectively, and the relative average deviation (RAD ) was minimal, which was 1.72%, 4.33%, and 7.90%, respectively, when the GSD was 2.13 cm/px. Yield prediction was modeled by the back-propagation artificial neural network prediction model using the color and textural characteristic values of fruit tree vegetation indices and the morphological characteristic values of point-cloud models. The R value between the predicted yield values and the measured values was 0.83–0.88, and the RAD value was 8.05–9.76%. These results show that the UAV-based canopy information measurement method in apple orchards proposed in this study can be applied to the remote evaluation of canopy 3D morphological information and can yield information about modern standardized orchards, thereby improving the level of orchard informatization. This method is thus valuable for the production management of modern standardized orchards.
机译:为了对现代标准化苹果园进行冠层信息测量,提出了一种基于无人机多模态信息的冠层信息测量方法。以现代标准化苹果园为研究对象,使用四旋翼无人机上的视觉成像系统收集苹果园中的冠层图像,并生成了三维(3D)点云模型和果园植被指数图像使用Pix4Dmapper软件。提出了基于灰度投影的果园索引图像(RCGP)行和列检测方法。建立了基于3D点云模型的果树冠层形态信息测量,并导出了基于UAV多峰信息的果树产量预测模型。结果如下:(1)当地面采样距离(GSD)为2.13–6.69 cm / px时,使用RCGP方法在果园中进行行检测的准确性为100.00%。 (2)使用RCGP,基于归一化绿色(NG)指数的灰度图像的列检测的平均准确性为98.71–100.00%。将果树冠层的,和的手动测量值与通过无人机获得的值进行了比较。结果表明,测定系数最高,分别为0.94、0.94和0.91,相对平均偏差(RAD)最小,当测定时,分别为1.72%,4.33%和7.90%。 GSD为2.13厘米/像素。使用果树植被指数的颜色和纹理特征值以及点云模型的形态特征值,通过反向传播人工神经网络预测模型对产量预测进行建模。预测的产量值和测量值之间的R值为0.83-0.88,RAD值为8.05-9.76%。这些结果表明,本研究提出的基于UAV的苹果园冠层信息测量方法可以应用于冠层3D形态信息的远程评估,并可以得到有关现代标准化果园的信息,从而提高了果园信息化水平。因此,该方法对于现代标准化果园的生产管理很有价值。

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