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Kriging prediction of stand-level forest information using mobile laser scanning data adjusted for nondetection

机译:使用流动激光扫描数据进行对非特性的衡量预测待机级森林信息

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摘要

This study presents an approach for predicting stand-level forest attributes utilizing mobile laser scanning data collected as a nonprobability sample. Firstly, recordings of stem density were made at point locations every 10th metre along a subjectively chosen mobile laser scanning track in a forest stand. Secondly, kriging was applied to predict stem density values for the centre point of all grid cells in a 5 m x 5 m lattice across the stand. Thirdly, due to nondetectability issues, a correction term was computed based on distance sampling theory. Lastly, the mean stem density at stand level was predicted as the mean of the point-level predictions multiplied with the correction factor, and the corresponding variance was estimated. Many factors contribute to the uncertainty of the stand-level prediction; in the variance estimator, we accounted for the uncertainties due to kriging prediction and due to estimating a detectability model from the laser scanning data. The results from our new approach were found to correspond fairly well to estimates obtained using field measurements from an independent set of 54 circular sample plots. The predicted number of stems in the stand based on the proposed methodology was 1366 with a 12.9% relative standard error. The corresponding estimate based on the field plots was 1677 with a 7.5% relative standard error.
机译:本研究提出了一种利用移动激光扫描数据作为非概率样本预测林分水平森林属性的方法。首先,沿着主观选择的移动激光扫描轨道,在林分中每隔10米的点位置记录树干密度。其次,克里格法被应用于预测整个林分5米x 5米晶格中所有网格单元中心点的茎密度值。第三,由于不可检测性问题,基于距离采样理论计算了校正项。最后,用点水平预测的平均值乘以校正因子,预测林分水平的平均树干密度,并估计相应的方差。林分水平预测的不确定性有很多因素;在方差估计器中,我们考虑了由于克里格预测和根据激光扫描数据估计可检测性模型而产生的不确定性。我们的新方法得出的结果与使用54个圆形样地独立集的现场测量得出的估计值相当吻合。根据建议的方法,林分中的茎数预测为1366根,相对标准误差为12.9%。基于现场图的相应估计为1677,相对标准误差为7.5%。

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