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Estimating Forest Aboveground Biomass by Combining Optical and SAR Data: A Case Study in Genhe Inner Mongolia China

机译:结合光学和SAR数据估算森林地上生物量:以内蒙古根河市为例

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摘要

Estimation of forest aboveground biomass is critical for regional carbon policies and sustainable forest management. Passive optical remote sensing and active microwave remote sensing both play an important role in the monitoring of forest biomass. However, optical spectral reflectance is saturated in relatively dense vegetation areas, and microwave backscattering is significantly influenced by the underlying soil when the vegetation coverage is low. Both of these conditions decrease the estimation accuracy of forest biomass. A new optical and microwave integrated vegetation index (VI) was proposed based on observations from both field experiments and satellite (Landsat 8 Operational Land Imager (OLI) and RADARSAT-2) data. According to the difference in interaction between the multispectral reflectance and microwave backscattering signatures with biomass, the combined VI (COVI) was designed using the weighted optical optimized soil-adjusted vegetation index (OSAVI) and microwave horizontally transmitted and vertically received signal (HV) to overcome the disadvantages of both data types. The performance of the COVI was evaluated by comparison with those of the sole optical data, Synthetic Aperture Radar (SAR) data, and the simple combination of independent optical and SAR variables. The most accurate performance was obtained by the models based on the COVI and optical and microwave optimal variables excluding OSAVI and HV, in combination with a random forest algorithm and the largest number of reference samples. The results also revealed that the predictive accuracy depended highly on the statistical method and the number of sample units. The validation indicated that this integrated method of determining the new VI is a good synergistic way to combine both optical and microwave information for the accurate estimation of forest biomass.
机译:估算森林地上生物量对于区域碳政策和可持续森林管理至关重要。无源光学遥感和有源微波遥感在森林生物量监测中都起着重要作用。然而,当植被覆盖率较低时,光谱反射率在相对茂密的植被区域中达到饱和,并且微波反向散射会受到下面土壤的显着影响。这两个条件都降低了森林生物量的估计准确性。基于野外实验和卫星(Landsat 8作战陆地成像仪(OLI)和RADARSAT-2)的观测数据,提出了一种新的光学和微波综合植被指数(VI)。根据生物质在多光谱反射率和微波反向散射特征之间相互作用的差异,利用加权光学优化的土壤校正植被指数(OSAVI)和微波水平传输和垂直接收信号(HV)来设计组合VI(COVI)。克服了两种数据类型的缺点。通过与唯一的光学数据,合成孔径雷达(SAR)数据以及独立光学和SAR变量的简单组合进行比较,评估了COVI的性能。通过基于COVI以及不包括OSAVI和HV的光学和微波最佳变量的模型,结合随机森林算法和最大数量的参考样本,可以获得最准确的性能。结果还表明,预测准确性在很大程度上取决于统计方法和样本单位数量。验证表明,这种确定新VI的综合方法是将光学和微波信息相结合以准确估算森林生物量的良好协同方式。

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