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Change Detection in (Semi-) Natural Grassland Ecosystems for Biodiversity Monitoring Using Open Data

机译:利用开放数据在(半)天然草地生态系统中进行生物多样性监测的变化检测

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A crucial challenge among remote sensing communities is the availability of open data. Several European and international programs address this aim offering a useful support to many applications. The detection of changes in ecosystems for the monitoring of biodiversity is one of the main goal for the commitments undertaken not only by the European Habitats Directive (92/43/EEC) and the Convention of Biological Diversity (CBD) but also the UN Sustainable Development Goals (SDG). This work aims to show the usefulness of free available data for the detecting of changes in (semi-) natural grasslands ecosystem for three different test site in Italy and Portugal. Due to its request for only one multispectral remote sensed image at time T2 and a land cover map at time T1, the Cross Correlation Analysis (CCA) algorithm was preferred for the detection of changes from (semi-) natural grasslands to other land cover. A Sentinel-2 image as T2 and the (semi-) natural grasslands Copernicus layer as T1 were considered. The accuracy assessment of the change maps was based on stratified random sampling weighting the Overall Accuracy (OA) by the proportions of the study area represented by the map classes. The reported finding for OA % of 94.21±0.10, is encouraging and promising as a support to policy makers.
机译:遥感社区之间的一个至关重要的挑战是开放数据的可用性。几个欧洲和国际计划解决了这一目标对许多申请提供了有益的支持。检测监测生物多样性的生态系统的变化是不仅由欧洲栖息地指令(92/43 / EEC)和生物多样性公约(CBD)进行的承诺承诺的主要目标之一,也是联合国可持续发展目标(SDG)。这项工作旨在展示可用数据的有用性,用于检测意大利和葡萄牙三种不同测试场所的(半)天然草原生态系统的变化。由于其在时间t2处仅对一个多光谱遥感图像的请求和在时间t1的陆地覆盖图,互相关分析(CCA)算法优选用于检测来自(半)天然草原到其他陆地覆盖的变化。考虑了作为T1的Sentinel-2图像和T1的(半)天然草原乔治层。变化图的准确性评估基于分层随机采样加权整体准确性(OA),通过地图类所代表的研究区域的比例。报告的oa%的94.21±0.10的发现是鼓励和承诺作为对政策制定者的支持。

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