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Comparison of segmentation methods on images of energy plants obtained by UAVs

机译:无人机获取能源植物图像分割方法的比较

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Bioenergy crops are widely used as a form of renewable energy. The special form of it is the energy forestry that includes short rotation coppice plantations in which a fast-growing species of tree or woody shrub is grown (e.g. willow, poplar). It is important to accurately estimate the yield before harvest in order to maximize the profit and reduce the costs of production [1]. The accurate prediction of forest biomass and volume can be used for the evaluation of plant breeding efficiency as well. Since energy forestries often contain different trees for estimating their volume it is essential to find segments containing the same tree species in the image. In recent times, the use of Unmanned Areal Vehicles (UAV) became more and more popular in precision agriculture [2], [3]. We investigated the applicability of a low cost UAV in the field of agricultural image segmentation that is the first stage of biomass estimation [4]. This paper compares 3D reconstruction methods that can be performed on aerial photographs of energy plants and focuses on the segmentation that can be applied to find different tree species that form the energy plantation. In order to this, several available segmentation algorithms were evaluated, such as the widely used eCognition and other free software tools like the Orfeo Toolbox. Matlab implementations of segmentation algorithms were also evaluated, such as the Mean-shift segmentation [5], Statistical region merging [6] and Link-based clustering ensembles [7]. The best segmentation accuracy according to the Dice similarity coefficient was reached by the supervised process of the Multi-resolution segmentation of the eCognition by 74.85%. The best accuracy obtained by an automated segmentation method, the Mean-shift segmentation, was 66.12 %.
机译:生物能源作物被广泛用作可再生能源的一种形式。它的特殊形式是能源林业,其中包括短轮伐的小灌木林,其中种植了快速生长的树木或木本灌木(例如柳树,杨树)。重要的是在收获前准确估算产量,以使利润最大化并降低生产成本[1]。森林生物量和数量的准确预测也可用于评估植物育种效率。由于能源森林通常包含不同的树木以估计其体积,因此必须找到图像中包含相同树木种类的部分。近年来,无人驾驶飞机的使用在精密农业中变得越来越流行[2],[3]。我们研究了低成本无人机在农业图像分割领域的应用,这是生物量估计的第一阶段[4]。本文比较了可以在能源植物的航拍照片上执行的3D重建方法,并着重于可用于查找形成能源种植园的不同树种的分割。为此,对几种可用的分割算法进行了评估,例如广泛使用的eCognition和其他免费软件工具,例如Orfeo Toolbox。还评估了分割算法的Matlab实现,例如均值漂移分割[5],统计区域合并[6]和基于链接的聚类集成[7]。通过Dice相似系数的最佳分割精度通过eCognition的多分辨率分割的监督过程达到了74.85%。通过自动分割方法(均值漂移分割)获得的最佳准确性为66.12%。

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