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Assessing UAV-collected image overlap influence on computation time and digital surface model accuracy in olive orchards

机译:评估无人机收集的图像重叠对橄榄园中计算时间和数字表面模型准确性的影响

摘要

Addressing the spatial and temporal variability of crops for agricultural management requires intensive and periodical information gathering from the crop fields. Unmanned Aerial Vehicle (UAV) photogrammetry is a quick and affordable method for information collecting; it provides spectral and spatial information when required with the added value of Digital Surface Models (DSMs) that reconstruct the crop structure in 3D using “structure from motion” techniques. In the full process from UAV flights to image analysis, DSM generation is one bottle-neck due to its high processing time. Despite its importance, the optimization of the required forward overlap for saving time in DSM generation has not yet been studied. UAV images were acquired at 50 and 100 m flight altitudes over two olive orchards with the aim of generating DSMs representing the tree crowns. Several DSMs created with different forward laps (in intervals of 5–6% from 58 to 97%) were evaluated in order to determine the optimal generation time according to the accuracy of tree crown measurements computed from each DSM. Based on our results, flying at 100 m altitude and with a 95% forward lap reported the best configuration. From the analysis derived from this configuration, tree volume was estimated with 95% accuracy. In addition, computing time was 85% lower in comparison to the maximum overlap studied (97%). It allowed computing the 3D features of 600 trees in a 3-ha parcel in a highly accurate and quick (a few hours after the UAV flights) manner by using a standard computer.
机译:解决用于农业管理的作物的时空变异性需要从耕地中收集大量且定期的信息。无人机摄影测量法是一种快速且负担得起的信息收集方法。当需要时,它可提供光谱和空间信息,以及数字表面模型(DSM)的附加值,这些数字表面模型使用“运动构造”技术以3D形式重建作物结构。在从无人机飞行到图像分析的整个过程中,DSM生成由于其处理时间长而成为瓶颈。尽管它很重要,但尚未研究为节省DSM生成时间而所需的前向重叠的优化。在两个橄榄园上分别以50和100 m的飞行高度获取了无人机图像,目的是生成代表树冠的DSM。为了确定根据每个DSM计算出的树冠测量的准确性的最佳生成时间,对几个具有不同前向间隔(从58%到97%为5–6%的间隔)创建的DSM进行了评估。根据我们的结果,以100 m的高度和95%的前向圈飞行是最佳配置。根据从此配置得出的分析,估计树的体积具有95%的准确性。此外,与研究的最大重叠量(97%)相比,计算时间减少了85%。它允许使用标准计算机以高度准确和快速的方式(在无人机飞行几小时后)在3公顷的包裹中计算600棵树的3D特征。

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