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Estimation of Canopy Area of Fruit Trees Using Light Unmanned Aerial Vehicle (UAV) and Image Processing Methods

机译:光无人航空公司(UAV)和图像处理方法估计果树冠层面积

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Some vegetative properties measured in fruit trees are important indicators in examining of plant growth calculation, estimation of leaf area index in evapotranspiration, fertilizer requirement etc. These measurements reflect the effects of the cultivation treatments in many areas of commercial growing and scientific studies. One of the most important measurements is the status of the canopy development. Canopy width, area and volume can be measured with some calculations. However, more technological equipment may be needed to reduce work and labor, and to make the results more precise and clearer. Recently, unmanned aerial vehicles, which have become widespread, have a wide potential for use in agriculture. By using image processing methods, it is possible to make more objective and high accuracy evaluations much faster. In this study, the images of the apple trees (Malus domestica Borkh) cultivar Golden grafted onto MM106 rootstock, were taken by light unmanned aerial vehicle to calculate the canopy area and then these images were analyzed using image processing methods for calculating canopy areas. Both circular and elliptical calculation methods were used. The area calculations with image processing methods were compared with the areas obtained manually. Comparisons were made by regression analysis. For the most successful method R value was 0.9662 for elliptic area and 0.9346 for circular area which was calculated by image processing. The results demonstrated that the image processing can be an alternative method to determine the canopy area according to accuracy ratios.
机译:在果树中测量的一些营养性质是研究植物生长计算中的重要指标,蒸散蒸腾,肥料要求等叶片区域指数的估算。这些测量反映了培养治疗在商业增长和科学研究的许多领域的影响。最重要的测量之一是天底开发的状态。可以通过一些计算来测量冠层宽度,区域和体积。然而,可能需要更多的技术设备来减少工作和劳动力,并使结果更加精确和更清晰。最近,无人驾驶的空中车辆已经普遍存在,具有广泛的农业潜力。通过使用图像处理方法,可以更快地制作更客观和高精度的评估。在这项研究中,苹果树(Malus Domestica Borkh)品种覆盖到MM106砧木上的栽培品种的图像被灯无人驾驶飞行器拍摄,以计算冠层区域,然后使用用于计算冠层区域的图像处理方法分析这些图像。使用圆形和椭圆形计算方法。将具有图像处理方法的区域计算与手动获得的区域进行比较。通过回归分析进行了比较。对于最成功的方法,R值为椭圆区域为0.9662,通过图像处理计算的圆形区域为0.9346。结果表明,根据精度比率,图像处理可以是确定顶篷区域的替代方法。

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