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Enhanced forest interior estimations utilizing lidar-assisted 3D forest cover map

机译:利用激光雷达辅助的3D森林覆盖图增强森林内部估算

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摘要

Accurate estimation of forest interior is essential for large scale sustainable forest management. Conventional 2D forest cover maps only indicate the presence and absence of forests and may introduce quantity and allocation bias in the delineation of forest interior due to the inclusion of early successional/recently disturbed forests. We addressed this issue by utilizing both lidar data and National Land Cover Database (NLCD) to generate a 3D forest cover map in the forested region of western North Carolina, USA. We first classified forest cover as either early or late successional based on vertical structural information (using either a single-height threshold or a variable-height threshold by forest type). We then estimated forest interior based on these different forest cover classes and assessed disagreement in quantity and allocation of interior forests as determined using 2D forest cover maps. In addition, we determined spatial relationships between developed areas and forest interiors to evaluate the impact of landscape settings on the estimation of forest interior. Our results indicated that using a single-height threshold, the 3D forest cover map was able to distinguish early vs. late successional forests with a classification accuracy of 96.6%. A similar classification accuracy (94.6%) was achieved when applying variable-height thresholds by forest type. Based on the single-height threshold method, excluding early successional forests (6.4% of all forested area) reduced estimates of forest interior by 10.3%, 9.6% and 10.4% at spatial resolutions of 4.4 ha, 39.7 ha and 234 ha, respectively. Using variable-height threshold by forest type, the estimates of forest interior were approximately 1% less than the estimates using the single-height threshold method due to the slightly decrease of the early successional forest classification (5.7% of all forest area). Our results indicated the forest interior may be overestimated without accounting for successional stage. Moreover, geospatial distance analysis revealed the overestimation of forest interior to be most pronounced in highly-fragmented areas. Our study demonstrated the advantage of considering 3D structural information for the accurate estimation of forest interior, particularly in areas already having fragmented forests. This information can be relatively easily obtained from lidar data. This 3D method will allow for the creation of high-accuracy forest interior maps that can help to answer a variety of ecological questions and improve forest management and conservation.
机译:对森林内部的准确估算对于大规模的可持续森林管理至关重要。常规的2D森林覆盖图仅指示森林的存在和不存在,并且由于包括早期演替/最近受干扰的森林,可能在森林内部的划分中引入数量和分配偏差。我们通过利用激光雷达数据和国家土地覆被数据库(NLCD)来解决此问题,从而在美国北卡罗来纳州西部的森林地区生成了3D森林覆盖图。我们首先根据垂直结构信息(根据森林类型使用单高阈值或高低阈值)将森林覆盖度分为早期或晚期演替。然后,我们根据这些不同的森林覆盖类别来估算森林内部,并评估内部森林在数量和分配方面的分歧,这些分歧是使用2D森林覆盖图确定的。此外,我们确定了发达地区与森林内部空间之间的空间关系,以评估景观设置对森林内部空间估计的影响。我们的结果表明,使用单一高度阈值,3D森林覆盖图能够以96.6%的分类精度区分早期和晚期演替森林。当按森林类型应用可变高度阈值时,达到了相似的分类精度(94.6%)。根据单高度阈值方法,排除早期演替森林(占所有森林面积的6.4%)后,在空间分辨率分别为4.4 ha,39.7 ha和234 ha时,森林内部的估计值分别减少了10.3%,9.6%和10.4%。使用不同森林类型的高度可变阈值,由于早期演替森林分类(占森林总面积的5.7%)略有减少,对森林内部的估计比使用单一高度阈值方法的估计少大约1%。我们的结果表明,在不考虑演替阶段的情况下,森林内部可能被高估了。此外,地理空间距离分析显示,在高度碎片化的地区,对森林内部的高估最为明显。我们的研究证明了考虑3D结构信息来准确估计森林内部空间的优势,尤其是在森林零散的地区。该信息可以从激光雷达数据中相对容易地获得。这种3D方法将允许创建高精度的森林内部地图,这些地图可以帮助回答各种生态问题并改善森林管理和保护。

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