首页> 外文期刊>Remote Sensing >Assessing the Suitability of Future Multi- and Hyperspectral Satellite Systems for Mapping the Spatial Distribution of Norway Spruce Timber Volume
【24h】

Assessing the Suitability of Future Multi- and Hyperspectral Satellite Systems for Mapping the Spatial Distribution of Norway Spruce Timber Volume

机译:评估未来的多光谱和高光谱卫星系统是否适合绘制挪威云杉木材量的空间分布

获取原文
           

摘要

The availability of accurate and timely information on timber volume is important for supporting operational forest management. One option is to combine statistical concepts (e.g., small area estimates) with specifically designed terrestrial sampling strategies to provide estimations also on the level of administrative units such as forest districts. This may suffice for economic assessments, but still fails to provide spatially explicit information on the distribution of timber volume within these management units. This type of information, however, is needed for decision-makers to design and implement appropriate management operations. The German federal state of Rhineland-Palatinate is currently implementing an object-oriented database that will also allow the direct integration of Earth observation data products. This work analyzes the suitability of forthcoming multi- and hyperspectral satellite imaging systems for producing local distribution maps for timber volume of Norway spruce, one of the most economically important tree species. In combination with site-specific inventory data, fully processed hyperspectral data sets (HyMap) were used to simulate datasets of the forthcoming EnMAP and Sentinel-2 systems to establish adequate models for estimating timber volume maps. The analysis included PLS regression and the k-NN method. Root Mean Square Errors between 21.6% and 26.5% were obtained, where k-NN performed slightly better than PLSR. It was concluded that the datasets of both simulated sensor systems fulfill accuracy requirements to support local forest management operations and could be used in synergy. Sentinel-2 can provide meaningful volume distribution maps in higher geometric resolution, while EnMAP, due to its hyperspectral coverage, can contribute complementary information, e.g., on biophysical conditions.
机译:提供准确及时的木材数量信息对于支持森林经营管理至关重要。一种选择是将统计概念(例如,小面积估算)与专门设计的地面采样策略相结合,以提供对诸如林区之类的行政单位水平的估算。这可能足以进行经济评估,但仍无法提供有关这些管理单位内木材数量分布的空间明确信息。但是,决策者需要此类信息来设计和实施适当的管理操作。德国联邦莱茵兰-普法尔茨州目前正在实施一个面向对象的数据库,该数据库还将允许直接集成地球观测数据产品。这项工作分析了即将到来的多光谱和高光谱卫星成像系统是否适合制作挪威云杉(一种经济上最重要的树种)的木材量的本地分布图。结合特定地点的清单数据,使用经过充分处理的高光谱数据集(HyMap)来模拟即将推出的EnMAP和Sentinel-2系统的数据集,以建立用于估计木材体积图的适当模型。分析包括PLS回归和k-NN方法。均方根误差在21.6%和26.5%之间,其中k-NN的性能略好于PLSR。结论是,两个模拟传感器系统的数据集均满足精度要求,以支持本地森林管理操作,并可用于协同作用。 Sentinel-2可以以更高的几何分辨率提供有意义的体积分布图,而EnMAP由于其高光谱覆盖范围,可以在例如生物物理条件下提供补充信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号