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Using Spatial Uncertainty of Prior Measurements to Design Adaptive Sampling of Elevation Data

机译:使用先前测量的空间不确定性设计高程数据的自适应采样

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Field sampling can be a major expense for planning within-field management in precision agriculture. An efficient sampling strategy should address knowledge gaps, rather than exhaustively collect redundant data. Modification of existing schemes is possible by incorporating prior knowledge of spatial patterns within the field. In this study, spatial uncertainty of prior digital elevation model (DEM) estimates was used to locate adaptive re-survey regions in the field. An agricultural vehicle equipped with RTK-DGPS was driven across a 2.3 ha field area to measure the field elevation in a continuous fashion. A geostatistical simulation technique was used to simulate field DEMs using measurements with different pass intervals and to quantitatively assess the spatial uncertainty of the DEM estimates. The high-uncertainty regions for each DEM were classified using image segmentation methods, and an adaptive re-survey was performed on those regions. The addition of adaptive re-surveying substantially reduced the time required to resample and resulted in DEMs with lower error. For the widest sampling pass width, the RMSE of 0.46 m of the DEM produced from an initial coarse sampling survey was reduced to 0.25 m after an adaptive re-survey, which was close to that (0.22 m) of the DEM produced with an all-field re-survey. The estimated sampling time for the adaptive re-survey was less than 50% of that for all-field re-survey. These results indicate that spatial uncertainty models are useful in an adaptive sampling design to help reduce sampling cost while maintaining the accuracy of the measurements. The method is general and thus not limited to elevation data but can be extended to other spatially variable field data
机译:田间采样可能是规划精准农业田间管理的主要费用。一个有效的抽样策略应该解决知识空白,而不是穷举收集冗余数据。通过合并领域内的空间模式的先验知识,可以对现有方案进行修改。在这项研究中,先验数字高程模型(DEM)估计的空间不确定性用于确定野外的自适应再调查区域。一辆装有RTK-DGPS的农用车辆行驶在2.3公顷的田地上,以连续的方式测量田高。地统计学模拟技术用于使用具有不同通过间隔的测量来模拟现场DEM,并定量评估DEM估计值的空间不确定性。使用图像分割方法对每个DEM的高不确定性区域进行分类,并对这些区域执行自适应重新调查。自适应重新调查的添加大大减少了重新采样所需的时间,并导致DEM的误差更低。对于最宽的采样通过宽度,在进行自适应重新调查后,从最初的粗略采样调查中产生的DEM的0.46 m的RMSE降低为0.25 m,这与通过全部采样产生的DEM的(0.22 m)接近。现场重新调查。自适应再调查的估计采样时间不到全场再调查的估计时间的50%。这些结果表明,空间不确定性模型在自适应采样设计中很有用,有助于降低采样成本,同时保持测量的准确性。该方法是通用的,因此不限于海拔数据,而是可以扩展到其他空间可变的场数据

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