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Current remote sensing approaches to monitoring forest degradation in support of countries measurement reporting and verification (MRV) systems for REDD+

机译:当前用于监测森林退化的遥感方法以支持国家针对REDD +的测量报告和验证(MRV)系统

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摘要

Forest degradation is a global phenomenon and while being an important indicator and precursor to further forest loss, carbon emissions due to degradation should also be accounted for in national reporting within the frame of UN REDD+. At regional to country scales, methods have been progressively developed to detect and map forest degradation, with these based on multi-resolution optical, synthetic aperture radar (SAR) and/or LiDAR data. However, there is no one single method that can be applied to monitor forest degradation, largely due to the specific nature of the degradation type or process and the timeframe over which it is observed. The review assesses two main approaches to monitoring forest degradation: first, where detection is indicated by a change in canopy cover or proxies, and second, the quantification of loss (or gain) in above ground biomass (AGB). The discussion only considers degradation that has a visible impact on the forest canopy and is thus detectable by remote sensing. The first approach encompasses methods that characterise the type of degradation and track disturbance, detect gaps in, and fragmentation of, the forest canopy, and proxies that provide evidence of forestry activity. Progress in these topics has seen the extension of methods to higher resolution (both spatial and temporal) data to better capture the disturbance signal, distinguish degraded and intact forest, and monitor regrowth. Improvements in the reliability of mapping methods are anticipated by SAR-optical data fusion and use of very high resolution data. The second approach exploits EO sensors with known sensitivity to forest structure and biomass and discusses monitoring efforts using repeat LiDAR and SAR data. There has been progress in the capacity to discriminate forest age and growth stage using data fusion methods and LiDAR height metrics. Interferometric SAR and LiDAR have found new application in linking forest structure change to degradation in tropical forests. Estimates of AGB change have been demonstrated at national level using SAR and LiDAR-assisted approaches. Future improvements are anticipated with the availability of next generation LiDAR sensors. Improved access to relevant satellite data and best available methods are key to operational forest degradation monitoring. Countries will need to prioritise their monitoring efforts depending on the significance of the degradation, balanced against available resources. A better understanding of the drivers and impacts of degradation will help guide monitoring and restoration efforts. Ultimately we want to restore ecosystem service and function in degraded forests before the change is irreversible.
机译:森林退化是一种全球现象,尽管它是森林进一步丧失的重要指标和先兆,但在联合国REDD +框架内的国家报告中也应考虑到由于退化造成的碳排放。在区域到国家范围内,已经逐步开发出方法来检测和绘制森林退化图,这些方法基于多分辨率光学,合成孔径雷达(SAR)和/或LiDAR数据。但是,由于退化类型或过程的特殊性质以及观察到的时间范围,没有一种方法可用于监测森林退化。该评估评估了两种主要的监测森林退化的方法:第一,通过冠层覆盖或代理的变化指示检测,第二,定量地上生物量(AGB)的损失(或收益)。讨论仅考虑对森林冠层有明显影响并因此可以通过遥感检测到的退化。第一种方法包括表征退化类型和跟踪干扰,检测林冠层之间的缝隙和碎片以及提供林业活动证据的代理的方法。这些主题的进展表明,方法已扩展到更高分辨率(空间和时间)数据,以更好地捕获干扰信号,区分退化和完整的森林并监控再生。 SAR光学数据融合和超高分辨率数据的使用有望提高映射方法的可靠性。第二种方法利用对森林结构和生物量具有已知敏感性的EO传感器,并讨论使用重复LiDAR和SAR数据进行的监测工作。使用数据融合方法和LiDAR高度度量来区分森林年龄和生长阶段的能力已经取得进展。干涉SAR和LiDAR已发现将森林结构变化与热带森林退化联系起来的新应用。已经在国家一级使用SAR和LiDAR辅助方法证明了AGB变化。下一代LiDAR传感器的上市有望带来进一步的改进。改进对相关卫星数据的访问和最佳可用方法是进行森林退化监测的关键。各国将需要根据退化的重要性,将其监测工作放在优先位置,并与可用资源保持平衡。更好地了解驱动程序和性能下降的影响将有助于指导监视和恢复工作。最终,我们希望在变化不可逆转之前,在退化的森林中恢复生态系统服务和功能。

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