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Potential of ALOS2 and NDVI to Estimate Forest Above-Ground Biomass, and Comparison with Lidar-Derived Estimates

机译:ALOS2和NDVI估计森林地上生物量的潜力,以及与激光雷达估计的比较

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Remote sensing supports carbon estimation, allowing the upscaling of field measurements to large extents. Lidar is considered the premier instrument to estimate above ground biomass, but data are expensive and collected on-demand, with limited spatial and temporal coverage. The previous JERS and ALOS SAR satellites data were extensively employed to model forest biomass, with literature suggesting signal saturation at low-moderate biomass values, and an influence of plot size on estimates accuracy. The ALOS2 continuity mission since May 2014 produces data with improved features with respect to the former ALOS, such as increased spatial resolution and reduced revisit time. We used ALOS2 backscatter data, testing also the integration with additional features (SAR textures and NDVI from Landsat 8 data) together with ground truth, to model and map above ground biomass in two mixed forest sites: Tahoe (California) and Asiago (Alps). While texture was useful to improve the model performance, the best model was obtained using joined SAR and NDVI (R 2 equal to 0.66). In this model, only a slight saturation was observed, at higher levels than what usually reported in literature for SAR; the trend requires further investigation but the model confirmed the complementarity of optical and SAR datatypes. For comparison purposes, we also generated a biomass map for Asiago using lidar data, and considered a previous lidar-based study for Tahoe; in these areas, the observed R 2 were 0.92 for Tahoe and 0.75 for Asiago, respectively. The quantitative comparison of the carbon stocks obtained with the two methods allows discussion of sensor suitability. The range of local variation captured by lidar is higher than those by SAR and NDVI, with the latter showing overestimation. However, this overestimation is very limited for one of the study areas, suggesting that when the purpose is the overall quantification of the stored carbon, especially in areas with high carbon density, satellite data with lower cost and broad coverage can be as effective as lidar.
机译:遥感支持碳估算,从而可以在很大程度上扩大现场测量的范围。激光雷达被认为是估算地面生物量的主要工具,但数据昂贵且按需收集,时空覆盖范围有限。先前的JERS和ALOS SAR卫星数据被广泛用于对森林生物量进行建模,文献表明,在低中度生物量值下信号饱和,并且地块大小对估算精度有影响。自2014年5月以来,ALOS2连续性任务产生的数据相对于以前的ALOS具有改进的功能,例如提高了空间分辨率并减少了重新访问时间。我们使用了ALOS2背向散射数据,还测试了与其他功能(来自Landsat 8数据的SAR纹理和NDVI)的集成以及地面真实情况,以便在两个混合森林站点(塔霍(加利福尼亚)和亚细亚哥(阿尔卑斯山))中对地面生物量进行建模和制图。 。尽管纹理对于改善模型性能很有用,但使用SAR和NDVI(R 2等于0.66)可以得到最佳模型。在该模型中,仅观察到轻微的饱和度,其水平高于文献中有关SAR的通常报道水平。这种趋势需要进一步研究,但该模型证实了光学和SAR数据类型的互补性。为了进行比较,我们还使用激光雷达数据生成了Asiago的生物量图,并考虑了先前基于Tahoe的基于激光雷达的研究;在这些区域中,塔霍(Tahoe)的观察到的R 2为0.92,亚细亚哥(Asiago)观察到的R 2为0.75。通过两种方法获得的碳库的定量比较可以讨论传感器的适用性。激光雷达捕获的局部变化范围高于SAR和NDVI,后者显示出高估了。但是,对于其中一个研究领域,这种高估是非常有限的,这表明,当目的是对所存储的碳进行整体量化时,尤其是在碳密度高的区域中,成本较低且覆盖范围广的卫星数据可以与激光雷达一样有效。 。

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