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WIDE-AREA MAPPING OF FOREST WITH NATIONAL AIRBORNE LASER SCANNING AND FIELD INVENTORY DATASETS

机译:森林广域映射与国家机载激光扫描和现场库存数据集

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Airborne laser scanning (ALS) remote sensing data are now available for entire countries such as Switzerland. Methods for the estimation of forest parameters from ALS have been intensively investigated in the past years. However, the implementation of a forest mapping workflow based on available data at a regional level still remains challenging. A case study was implemented in the Canton of Valais (Switzerland). The national ALS dataset and field data of the Swiss National Forest Inventory were used to calibrate estimation models for mean and maximum height, basal area, stem density, mean diameter and stem volume. When stratification was performed based on ALS acquisition settings and geographical criteria, satisfactory prediction models were obtained for volume (R~2=0.61 with a root mean square error of 47%) and basal area (respectively 0.51 and 45%) while height variables had an error lower than 19%. This case study shows that the use of nationwide ALS and field datasets for forest resources mapping is cost efficient, but additional investigations are required to handle the limitations of the input data and optimize the accuracy.
机译:空中激光扫描(ALS)遥感数据现在可以为瑞士等整个国家/地区提供。在过去几年中,在ALS估算森林参数的方法。但是,基于区域层面的可用数据的森林映射工作流程仍然存在挑战性。案例研究是在瓦莱斯(瑞士)的州。瑞士国家森林库存的国家ALS数据集和现场数据用于校准平均值和最大高度,基础区域,茎密度,平均直径和茎体积的估计模型。当基于ALS采集设置和地理标准进行分层时,获得令人满意的预测模型,用于体积(R〜2 = 0.61,具有47%的根均方误差的R〜2 = 0.61),并且基底面积(分别为0.51和45%),而高度变量具有误差低于19%。本案例研究表明,使用全国范围的ALS和Field数据集进行森林资源映射是成本效益的,但需要额外的调查来处理输入数据的局限性并优化精度。

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