Biomass evaluation by the use of Landsat satellite imageryand forestry data

A. Mei, R. Salvatori, C. Bassani, F. Petracchini
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Abstract

Satellite imagery allows to estimate vegetation parameters related to large areas and to evaluate biogeochemical cycles and radiative energy transfer processes between soil/vegetation and atmosphere.Moreover, the spectral indices derived from remote sensed data can be used for biomass estimation.This paper focuses on the evaluation of above-ground biomass in the Leonessa Municipality, Latium Region (Italy) by the use of Landsat 7 ETM+ (2001) and Landsat 8-OLI (2015) data. To achieve this goal, Rural Development Programs (PSR) and Forest Management Plans(FMP) (2001-2010) have been analyzed to retrieve the main information related to the different types of wood resources. In particular, dendrometry and prospects of different cultivation classes provide the main data such as the extension (ha), the biomass production (m3/ha), the number of plants, the cuts plan of each Forest Management Unit (FMU). This dataset was organized within a Geographical Information System (GIS) as well as Landsat images.Landsat 7 imagery was classified with two spectral indices, Normalized Difference Vegetation Index (NDVI) and Tasseled Cup, in order to find a correlation between remote sensed data and biomass production in m3/ha. Once obtained the spectral model, the analysis was extended to Landsat 8 and the 2015 biomass map was produced and exported on the web. The results, obtained by the exclusively analysis of open source optical remote sensing data, demonstrate their suitability to update FMPs with lower cost if compared to canonical field methods. Additionally, the analysis allows to extend the investigation to un-analyzed areas by forestry studies, too.
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利用陆地卫星图像和林业数据进行生物量评价
卫星图像可以估算与大面积有关的植被参数,并评估土壤/植被与大气之间的生物地球化学循环和辐射能转移过程。此外,遥感数据的光谱指数可用于生物量估算。本文利用Landsat 7 ETM+(2001)和Landsat 8-OLI(2015)数据对意大利Latium地区Leonessa市的地上生物量进行了评价。为了实现这一目标,对农村发展计划(PSR)和森林管理计划(FMP)(2001-2010)进行了分析,以检索与不同类型木材资源相关的主要信息。特别是,不同栽培类别的树木测量和前景提供了主要数据,如种植面积(公顷)、生物量产量(立方米/公顷)、植物数量、每个森林管理单位(FMU)的砍伐计划。该数据集是在地理信息系统(GIS)和陆地卫星图像中组织的。利用归一化植被指数(Normalized Difference Vegetation Index, NDVI)和Tasseled Cup两种光谱指数对Landsat 7影像进行分类,寻找遥感数据与m3/ha生物量产量之间的相关性。一旦获得光谱模型,将分析扩展到Landsat 8,并制作2015年生物量图并在网络上输出。通过对开源光学遥感数据的独家分析得出的结果表明,与规范的现场方法相比,它们适合以更低的成本更新fmp。此外,该分析还允许将调查扩展到林业研究未分析的地区。
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