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首页> 外文期刊>Rangeland Ecology & Management >Estimating Forage Utilization with Drone-Based Photogrammetric Point Clouds
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Estimating Forage Utilization with Drone-Based Photogrammetric Point Clouds

机译:估算基于无人机摄影测量点云的觅食利用

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Monitoring of forage utilization typically occurs at sample locations, or key areas, selected for their presumed potential to represent utilization across pastures. However, utilization can vary greatly across landscapes and may not be well represented by traditional ground-based sampling without great effort. Remote sensing from satellite and manned airborne platforms offers spatial coverage at landscape scale, but their poor spatial resolution (satellite) and cost (manned airborne) may limit their use in monitoring forage utilization. High-resolution photogrammetric point clouds obtained from small unmanned aerial systems (sUAS) represent an appealing alternative. We developed a method to estimate utilization by observing the height reduction of herbaceous plants represented by 3-dimensional point clouds. We tested our method in a semiarid savanna in southern Arizona by comparing utilization estimates with ground-based methods after a month-long grazing duration. In six plots, we found strong correlation between imagery and ground-based estimates (r2 = 0.78) and similar average estimate of utilization of across all plots (ground-based = 18%, imagery = 20%). With a few workflow and technological improvements, we think it is feasible to estimate point cloud utilization over the entire pasture (150 ha) and potentially even larger areas. These improvements include optimizing the number of images collected and used, equipping drones with more accurate global navigation satellite systems (e.g., Global Positioning System), and processing images with cloud-based parallel processing. We show proof of concept to provide confident estimates of forage utilization patterns over large pastures and landscapes, at levels of spatial precision that are consistent with ground-based methods. The adoption of drone-based monitoring of utilization of forage on rangelands could follow the paradigm shift already demonstrated by Global Positioning Systems and Geographic information systems technologies, where the initial high computing costs were reduced, use became the norm, and the availability of more precise spatial patterns was applied to prescribe and evaluate management practices. (C) 2019 The Society for Range Management. Published by Elsevier Inc. All rights reserved.
机译:监测牧草利用通常发生在样品位置,或者关键区域,为其推定可能代表牧场的使用。然而,利用可能会在景观中大大变化,并且可能不受传统地面的采样优质,而无需巨大努力。从卫星和载人的空中平台的遥感,在景观量表处提供空间覆盖率,但它们的空间分辨率(卫星)和成本(载人空气传播)可能会限制它们在监测饲养利用率中的使用。从小无人机空中系统(SUAS)获得的高分辨率摄影测量点云代表了一种吸引人的替代品。我们开发了一种通过观察由三维云表示的草本植物的高度减少来估计利用的方法。我们在南亚利桑那州的半干旱大草原中测试了我们的方法,通过比较在一个月长的放牧持续时间后用基于基于地面的方法进行利用估计。在六个地块中,我们发现图像与基于地面的估计(R2 = 0.78)之间的强烈相关性和所有地块的使用平均平均估计(基于地面= 18%,图像= 20%)。通过一些工作流程和技术改进,我们认为估计整个牧场(150公顷)和潜在的较大区域的点云利用是可行的。这些改进包括优化收集和使用的图像的数量,用更准确的全球导航卫星系统(例如,全局定位系统)和基于云的并行处理的处理图像。我们展示了概念证明,为大型牧场和景观的牧草利用模式提供自信的估计,其空间精度水平与基于地面的方法一致。通过全球定位系统和地理信息系统技术已经遵循已展示的基于无人机的牧草利用监测,其中初始化的高计算成本降低,使用更加准确的常态,并且更精确的可用性空间模式被应用于规定和评估管理实践。 (c)2019年系列管理协会。由elsevier Inc.保留所有权利发布。

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