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ABOVEGROUND BIOMASS ESTIMATION OF TROPICAL PEAT SWAMP FORESTS USING SAR AND OPTICAL DATA

机译:使用SAR和光学数据的热带泥炭沼泽森林地上地上生物量估计

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Climate change mitigation mechanisms, such as REDD+, which aim at avoiding deforestation and forest degradation, require an accurate aboveground biomass (AGB) monitoring. In the present study, multi-temporal X-(TerraSAR-X) and L-band (ALOS PALSAR) SAR data and a multispectral RapidEye image were analyzed for their ability to estimate AGB in a tropical forested peatland area in Central Kalimantan on Borneo, Indonesia. Field inventory AGB data was used to calibrate regression models based on SAR backscatter values and spectral unmixed fractions of the RapidEye image. The independent validation indicated that the estimated AGB using optical data is more accurate (RMSE=44%) than the SAR estimated AGB (RMSE=82%). AGB derived from RapidEye data overestimates AGB on burned areas, but these estimations depict degradation through low impact selective logging. The SAR model estimated AGB accurately in lower biomass ranges and on burned scars.
机译:旨在避免森林砍伐和森林退化的气候变化减缓机制,例如避免森林砍伐和森林降级,需要准确的地上生物量(AGB)监测。在本研究中,分析了多颞X-(Terrasar-X)和L波段(Alos Palsar)SAR数据和多光谱谱谱图图像,以便他们在婆罗洲市中心的热带森林泥炭地区估算AGB的能力,印度尼西亚。现场清单AGB数据用于基于SAR反向散射值和缩放图像的光谱未混合分数校准回归模型。独立验证表明,使用光学数据的估计AGB比SAR估计AGB(RMSE = 82%)更准确(RMSE = 44%)。 AGB从Rapideye数据源于烧毁区域的AGB,但这些估计通过低冲击选择性测井来描述劣化。 SAR模型在较低的生物量范围内准确地估计AGB和烧伤的疤痕。

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