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Integration of high-resolution optical and SAR satellite remote sensing datasets for aboveground biomass estimation in subtropical pine forest, Pakistan

机译:巴基斯坦亚热带松树林下地上生物量估算的高分辨率光学和SAR卫星遥感数据集

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In this study, we investigate stand-alone and combined Pleiades high-resolution passive optical and ALOS PALSAR active Synthetic Aperture Radar (SAR) satellite imagery for aboveground biomass (AGB) estimation in subtropical mountainous Chir Pine (Pinus roxburghii) forest in Murree Forest Division, Punjab, Pakistan. Spectral vegetation indices (NDVI, SAVI, etc.) and sigma nought HV-polarization backscatter dB values are derived from processing optical and SAR datasets, respectively, and modeled against field-measured AGB values through various regression models (linear, nonlinear, multi-linear). For combination of multiple spectral indices, NDVI, TNDVI, and MSAVI2 performed the best with modelR(2)/RMSE values of 0.86/47.3 tons/ha. AGB modeling with SAR sigma nought dB values gives low modelR(2)value of 0.39. The multi-linear combination of SAR sigma nought dB values with spectral indices exhibits more variability as compared with the combined spectral indices model. The Leave-One-Out-Cross-Validation (LOOCV) results follow closely the behavior of the model statistics. SAR data reaches AGB saturation at around 120-140 tons/ha, with the region of high sensitivity around 50-130 tons/ha; the SAR-derived AGB results show clear underestimation at higher AGB values. The models involving only spectral indices underestimate AGB at low values ( 60 tons/ha). This study presents biomass estimation maps of the Chir Pine forest in the study area and also the suitability of optical and SAR satellite imagery for estimating various biomass ranges. The results of this work can be utilized towards environmental monitoring and policy-level applications, including forest ecosystem management, environmental impact assessment, and performance-based REDD+ payment distribution.
机译:在这项研究中,我们调查独立和组合的Pleiades高分辨率的远程无源光学和Alos Palsar Active合成孔径雷达(SAR)卫星图像,用于穆雷森林师的亚热带山区Chir Pine(Pinus Roxburghii)森林的地上生物量(AGB)估计,旁遮普,巴基斯坦。光谱植被指数(NDVI,SAVI等)和Sigma Naught HV偏振反向散射DB值分别从处理光学和SAR数据集进行,并通过各种回归模型(线性,非线性,多 - 线性)。对于多谱指数,NDVI,TNDVI和MSAVI2的组合,使用ModelR(2)/ RMSE值为0.86 / 47.3吨/公顷。 AGB建模与SAR SIGMA Naught DB值提供低型号(2)值0.39。与组合光谱索引模型相比,SAR SIGMA Naught DB值的多线性组合具有频谱指数的更可变性。休假一交叉验证(LOOCV)结果紧密地关注模型统计的行为。 SAR数据达到AGB饱和度,约为120-140吨/公顷,具有高灵敏度的区域约为50-130吨/公顷; SAR派生的AGB结果显示在较高的AGB值下明确低估。仅涉及低值低估的频谱指数的模型(<60吨/公顷)。本研究介绍了研究区域中Chir Pine林的生物量估计图,以及光学和SAR卫星图像的适用性,用于估计各种生物质范围。该工作的结果可用于环境监测和政策级申请,包括森林生态系统管理,环境影响评估和基于绩效的REDD +付款分布。

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