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首页> 外文期刊>Ecological indicators >Remotely sensed indicators of forest conservation status: Case study from a Natura 2000 site in southern Portugal
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Remotely sensed indicators of forest conservation status: Case study from a Natura 2000 site in southern Portugal

机译:遥感的森林保护状况指标:来自葡萄牙南部Natura 2000站点的案例研究

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摘要

The successful implementation of habitat conservation measures demands regular and spatially explicit monitoring and reporting on conservation status at a range of scales, based on indicators of both habitat range and condition (structure and functions required for long-term maintenance). Such is the case with the Natura 2000 protected areas in Europe. Focusing on the cork oak (Quercus suber) forests of one such area, the Serra de Monchique in southern Portugal, we test the complementarity and joint effectiveness of airborne multispectral and laser scanning (lidar) in providing robust indicators of conservation status. Principal forest types and other land covers are mapped to an accuracy of up to 70% (11 land cover classes) and 81% (5 classes) by fusing the two remote sensing datasets, results that are superior to using either one alone. Using previously tested relationships between lidar height metrics, forest vegetation structure and species diversity, we develop a map predicting areas of high (22% of area), medium (25%) and low (53%) condition. We recommend the further development and testing of remotely sensed range and condition indicators of conservation status for their application in important forested sites across Europe and beyond.
机译:成功实施栖息地保护措施,需要根据栖息地范围和状况(长期维护所需的结构和功能)的指标,在​​一定范围内进行定期和在空间上明确的监视和报告保护状况。欧洲的Natura 2000保护区就是这种情况。以葡萄牙南部的Serra de Monchique这类地区的软木栎(栎木)森林为重点,我们测试了机载多光谱和激光扫描(激光雷达)的互补性和联合有效性,以提供强有力的保护状况指标。通过将两个遥感数据集融合,可以将主要森林类型和其他土地覆被映射到高达70%(11个土地覆被类别)和81%(5类)的精度,其结果优于单独使用其中一个。使用先前测试的激光雷达高度度量,森林植被结构和物种多样性之间的关系,我们绘制了一张地图,预测了高(22%),中(25%)和低(53%)状况。我们建议进一步开发和测试遥感保护状态的范围和状况指标,以将其应用到欧洲及其他地区的重要森林地带。

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