利用激光扫描预测变化环境下植被特征

N. Saarinen
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摘要

从单株树一级的管理活动到森林资源的战略规划,都需要关于植被特征的准确和最新资料。过时的信息可能导致无益甚至错误的决策,至少在管理活动的时机方面是这样。机载激光扫描(ALS)迄今为止已成功地用于涉及详细植被测绘的应用,因为它能够同时产生关于植被和地面表面的准确信息。本文的目的是发展表征植被及其在不同环境中的变化的方法。在子研究1中,提出了一种多源单树清单(MS-STI)方法来更新城市树的属性。在MSSTI中,茎图是通过地面激光扫描生成的,通过将茎图与ALS数据得出的预测因子相结合,可以获得更好的胸径高度估计,同时也可以产生新的属性,如高度和树冠大小。子研究II采用船载移动激光扫描(MLS)数据绘制河岸植被图并识别变化。总体分类准确率为73%,与其他研究的准确率相近。利用多时相MLS数据集绘制了植被的逐年变化图。在子研究III中,将开放获取的ALS数据与多源国家森林清查(NFI)数据相结合,调查与风害相关的驱动因素。特别感兴趣的是基于als的预测器,用于绘制有风干扰的区域,并应用逻辑回归来产生风倾向的连续概率面,以确定最有可能遭受风害的区域。结果表明,在建模方法中,ALS和多源NFI的组合将预测精度从76%提高到81%。本文展示了ALS和MLS在不同环境下表征植被和绘制植被变化的能力。开发的应用程序可以提高和扩展多时相三维数据集的利用率,增加数据的价值。本文的研究结果可用于生产更准确、更多样化和最新的信息,用于与自然资源相关的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting vegetation characteristics in a changing environment by means of laser scanning
Accurate and up-to-date information concerning vegetation characteristics is needed for decision-making from individual-tree-level management activities to the strategic planning of forest resources. Outdated information may lead to unbeneficial or even wrong decisions, at least when it comes to the timing of management activities. Airborne laser scanning (ALS) has so far been successfully used for applications involving detailed vegetation mapping because of its capability to simultaneously produce accurate information on vegetation and ground surfaces. The aim of this dissertation was to develop methods for characterizing vegetation and its changes in varying environments. A method called multisource single-tree inventory (MS-STI) was developed in substudy I to update urban tree attributes. In MSSTI stem map was produced with terrestrial laser scanning and by combining the stem map with predictors derived from ALS data it was possible to obtain improved estimates of diameter-at-breast height but also to produce new attributes such as height and crown size. Boat-based mobile laser scanning (MLS) data were employed in substudy II to map riverbank vegetation and identify changes. The overall classification accuracy of 73% was obtained, which is similar to accuracies found in other studies. With multi-temporal MLS data sets changes in vegetation were mapped year to year. In substudy III, open access ALS data were combined with multisource national forest inventory (NFI) data to investigate the drivers associated to wind damage. The special interest was in ALS-based predictors to map areas with wind disturbance and apply logistic regression to produce a continuous probability surface of wind predisposition to identify areas most likely to experience wind damage. The results demonstrated that a combination of ALS and multisource NFI in the modelling approach increased the prediction accuracy from 76% to 81%. The dissertation showed the capability of ALS and MLS for characterizing vegetation and mapping changes in varying environments. The developed applications could increase and expand the utilization of multi-temporal 3D data sets as well as increase data value. The results of this dissertation can be utilized in producing more accurate, diverse, and up-to-date information for decision-making related to natural resources.
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