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首页> 外文期刊>Forest Ecosystems >Accuracy assessment and error analysis for diameter at breast height measurement of trees obtained using a novel backpack LiDAR system
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Accuracy assessment and error analysis for diameter at breast height measurement of trees obtained using a novel backpack LiDAR system

机译:使用小说背包激光雷达系统获得乳房高度测量直径的精度评估和误差分析

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BackgroundThe LiBackpack is a recently developed backpack light detection and ranging (LiDAR) system that combines the flexibility of human walking with the nearby measurement in all directions to provide a novel and efficient approach to LiDAR remote sensing, especially useful for forest structure inventory. However, the measurement accuracy and error sources have not been systematically explored for this system.MethodIn this study, we used the LiBackpack D-50 system to measure the diameter at breast height (DBH) for a Pinus sylvestris tree population in the Saihanba National Forest Park of China, and estimated the accuracy of LiBackpack measurements of DBH based on comparisons with manually measured DBH values in the field. We determined the optimal vertical slice thickness of the point cloud sample for achieving the most stable and accurate LiBackpack measurements of DBH for this tree species, and explored the effects of different factors on the measurement error.Result1) A vertical thickness of 30?cm for the point cloud sample slice provided the highest fitting accuracy (adjusted Rsup2/sup?=?0.89, Root Mean Squared Error (RMSE)?=?20.85?mm); 2) the point cloud density had a significant negative, logarithmic relationship with measurement error of DBH and it explained 35.1% of the measurement error; 3) the LiBackpack measurements of DBH were generally smaller than the manually measured values, and the corresponding measurement errors increased for larger trees; and 4) by considering the effect of the point cloud density correction, a transitional model can be fitted to approximate field measured DBH using LiBackpack- scanned value with satisfactory accuracy (adjusted Rsup2/sup?=?0.920; RMSE?=?14.77?mm), and decrease the predicting error by 29.2%. Our study confirmed the reliability of the novel LiBackpack system in accurate forestry inventory, set up a useful transitional model between scanning data and the traditional manual-measured data specifically for P. sylvestris , and implied the applicable substitution of this new approach for more species, with necessary parameter calibration.
机译:背景技术Libackpack是最近开发的背包光检测和测距(LIDAR)系统,这些系统将人类走路的灵活性与所有方向的附近的测量相结合,以提供一种新颖和有效的Lidar遥感方法,特别适用于森林结构库存。然而,对该系统没有系统探索了测量精度和错误来源。本研究中的方法,我们使用Libackpack D-50系统测量Saihanba国家森林的Pinus Sylvestris树种群的乳房高度(DBH)的直径中国公园,基于对现场手动测量的DBH值进行比较,估计DBH LibackPack测量的准确性。我们确定了点云样本的最佳垂直片厚度,以实现该树种的DBH最稳定和准确的LibackPack测量,并探讨了不同因素对测量误差的影响。方法为30?cm的垂直厚度点云样品切片提供了最高的拟合精度(调整的R 2 ?=?0.89,根均比误差(RMSE)?=?20.85?mm); 2)点云密度与DBH的测量误差有显着的负数,对数关系,并解释了35.1%的测量误差; 3)DBH的libackpack测量通常小于手动测量值,并且对于较大的树木增加了相应的测量误差; 4)通过考虑点云密度校正的效果,可以使用libackpack-scanned值以满意的精度(调整的R 2 Δ=Δ0.920; rmse ?=?14.77?mm),并将预测误差减少29.2%。我们的研究证实了新颖libackpack系统在准确的林业库存中的可靠性,在扫描数据和专门针对P.Sylvestris的传统手动测量数据之间建立了一个有用的过渡模型,并暗示了这种新方法的适用替代,以获得更多物种,具有必要的参数校准。

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