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The Role of Improved Ground Positioning and Forest Structural Complexity When Performing Forest Inventory Using Airborne Laser Scanning

机译:使用空气激光扫描执行森林库存时,改善地面定位和森林结构复杂性的作用

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The level of spatial co-registration between airborne laser scanning (ALS) and ground data can determine the goodness of the statistical inference used in forest inventories. The importance of positioning methods in the field can increase, depending on the structural complexity of forests. An area-based approach was followed to conduct forest inventory over seven National Forest Inventory (NFI) forest strata in Spain. The benefit of improving the co-registration goodness was assessed through model transferability using low- and high-accuracy positioning methods. Through the inoptimality losses approach, we evaluated the value of good co-registered data, while assessing the influence of forest structural complexity. When using good co-registered data in the 4th NFI, the mean tree height (HTmean), stand basal area (G) and growing stock volume (V) models were 2.6%, 10.6% and 14.7% (in terms of root mean squared error, RMSE %), lower than when using the coordinates from the 3rd NFI. Transferring models built under poor co-registration conditions using more precise data improved the models, on average, 0.3%, 6.0% and 8.8%, while the worsening effect of using low-accuracy data with models built in optimal conditions reached 4.0%, 16.1% and 16.2%. The value of enhanced data co-registration varied between forests. The usability of current NFI data under modern forest inventory approaches can be restricted when combining with ALS data. As this research showed, investing in improving co-registration goodness over a set of samples in NFI projects enhanced model performance, depending on the type of forest and on the assessed forest attributes.
机译:空气传播激光扫描(ALS)与地面数据之间的空间共同登记水平可以确定森林库存中使用的统计推断的良好。根据森林的结构性复杂性,现场定位方法的重要性可能会增加。遵循基于地区的方法在西班牙的七个国家森林库存(NFI)森林地层进行森林库存。通过使用低精度和高精度定位方法进行模型可转移来评估改善共同登记良好的益处。通过不透道的损失方法,我们评估了良好的共同注册数据的价值,同时评估了森林结构复杂性的影响。在第4个NFI中使用良好的共登记数据时,平均树高度(HTMEAN),站基面积(G)和生长库存量(v)模型为2.6%,10.6%和14.7%(就根均方而言错误,RMSE%),低于使用3RD NFI的坐标时。使用更精确的数据在差的共同登记条件下建立的转移模型,平均,平均,0.3%,6.0%和8.8%,而使用低精度数据与最佳条件下建立的模型的恶化效果达到4.0%,16.1 %和16.2%。增强数据共同登记的价值在森林之间变化。在与ALS数据组合时,可以限制现代森林库存方法下当前NFI数据的可用性。随着该研究显示,在NFI项目中的一组样本上投入改善共同登记的良好,这取决于森林类型和评估的林业属性。

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