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首页> 外文期刊>Remote Sensing >Detection and Segmentation of Vine Canopy in Ultra-High Spatial Resolution RGB Imagery Obtained from Unmanned Aerial Vehicle (UAV): A Case Study in a Commercial Vineyard
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Detection and Segmentation of Vine Canopy in Ultra-High Spatial Resolution RGB Imagery Obtained from Unmanned Aerial Vehicle (UAV): A Case Study in a Commercial Vineyard

机译:从无人机获得的超高分辨率RGB图像中藤冠的检测和分割:以商业葡萄园为例

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The use of Unmanned Aerial Vehicles (UAVs) in viticulture permits the capture of aerial Red-Green-Blue (RGB) images with an ultra-high spatial resolution. Recent studies have demonstrated that RGB images can be used to monitor spatial variability of vine biophysical parameters. However, for estimating these parameters, accurate and automated segmentation methods are required to extract relevant information from RGB images. Manual segmentation of aerial images is a laborious and time-consuming process. Traditional classification methods have shown satisfactory results in the segmentation of RGB images for diverse applications and surfaces, however, in the case of commercial vineyards, it is necessary to consider some particularities inherent to canopy size in the vertical trellis systems (VSP) such as shadow effect and different soil conditions in inter-rows (mixed information of soil and weeds). Therefore, the objective of this study was to compare the performance of four classification methods (K-means, Artificial Neural Networks (ANN), Random Forest (RForest) and Spectral Indices (SI)) to detect canopy in a vineyard trained on VSP. Six flights were carried out from post-flowering to harvest in a commercial vineyard cv. Carménère using a low-cost UAV equipped with a conventional RGB camera. The results show that the ANN and the simple SI method complemented with the Otsu method for thresholding presented the best performance for the detection of the vine canopy with high overall accuracy values for all study days. Spectral indices presented the best performance in the detection of Plant class (Vine canopy) with an overall accuracy of around 0.99. However, considering the performance pixel by pixel, the Spectral indices are not able to discriminate between Soil and Shadow class . The best performance in the classification of three classes ( Plant , Soil , and Shadow ) of vineyard RGB images, was obtained when the SI values were used as input data in trained methods (ANN and RForest), reaching overall accuracy values around 0.98 with high sensitivity values for the three classes.
机译:在葡萄栽培中使用无人飞行器(UAV)可以捕获具有超高空间分辨率的空中红绿蓝(RGB)图像。最近的研究表明,RGB图像可用于监视葡萄的生物物理参数的空间变异性。然而,为了估计这些参数,需要精确且自动的分割方法以从RGB图像中提取相关信息。手动分割航空影像是一个费力且耗时的过程。传统分类方法在针对各种应用和表面的RGB图像分割中显示出令人满意的结果,但是,对于商业葡萄园,有必要考虑垂直网格系统(VSP)中树冠尺寸固有的一些特殊性,例如阴影行间的土壤肥力效应和不同的土壤条件(土壤和杂草的混合信息)。因此,本研究的目的是比较四种分类方法(K均值,人工神经网络(ANN),随机森林(RForest)和光谱指数(SI))在通过VSP培训的葡萄园中检测冠层的性能。从开花后到在商业葡萄园的简历中进行了六次飞行。 Carménère使用配备传统RGB摄像头的低成本无人机。结果表明,在所有研究日中,ANN和简单的SI方法以及与Otsu方法相结合的阈值都表现出最佳的检测葡萄冠层的性能,并且具有较高的总体准确度值。光谱指数表现出最佳的植物等级(葡萄树冠)检测性能,整体精度约为0.99。但是,考虑到逐个像素的性能,光谱索引无法区分“土壤”和“阴影”类别。当将SI值用作经过训练的方法(ANN和RForest)的输入数据时,在葡萄园RGB图像的三个类别(植物,土壤和阴影)的分类中获得了最佳性能,达到了0.98左右的总体精度值,并且这三个类别的灵敏度值。

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