This work intends to lay the foundations for identifying the prevailing forest types and the delineation of forest units within private forest inventories in the Autonomous Province of Trento (PAT), using currently available remote sensing solutions. In particular, data from LiDAR and hyperspectral surveys of 2014 made available by PAT were acquired and processed. Such studies are very important in the context of forest management scenarios. The method includes defining tree species ground-truth by outlining single tree crowns with polygons and labeling them. Successively two supervised machine learning classifiers, K-Nearest Neighborhood and Support Vector Machine (SVM) were used. The results show that, by setting specific hyperparameters, the SVM methodology gave the best results in classification of tree species. Biomass was estimated using canopy parameters and the Jucker equation for the above ground biomass (AGB) and that of Scrinzi for the tariff volume. Predicted values were compared with 11 field plots of fixed radius where volume and biomass were field-estimated in 2017. Results show significant coefficients of correlation: 0.94 for stem volume and 0.90 for total aboveground tree biomass.
翻译:这项工作旨在为利用现有遥感解决方案,确定Trento自治省私人森林清单中的现有森林类型和森林单位划界奠定基础,特别是获取和处理PAT提供的2014年LiDAR和超光谱调查数据,这些研究在森林管理设想中非常重要,方法包括:通过概述单一树冠并标出多边形并标出这些树冠来界定树种的地面真象;连续使用两个受监督的机器学习分类器K-Nearest Neearborhood和辅助矢量机(SVM);结果显示,通过设定具体的超参数,SVM方法为树种分类提供了最佳结果;估计了生物群,使用树本参数和上面地面生物量的Jucker等值;将预测值与2017年实地估计数量和生物量的11块固定半径实地测出的实地测得值;结果显示重大相关系数:干量0.94,地面树质总量0.90。