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Aboveground biomass estimation of tropical peat swamp forests using SAR and optical data.

IGARSS(2012)

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摘要
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.
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关键词
calibration,climate mitigation,geophysical image processing,regression analysis,synthetic aperture radar,vegetation,vegetation mapping,ALOS PALSAR,Borneo,Central Kalimantan,Indonesia,REDD+,RapidEye data,SAR backscatter values,SAR model,TerraSAR-X,aboveground biomass estimation,aboveground biomass monitoring,burned areas,burned scars,climate change mitigation mechanisms,deforestation,field inventory AGB data,forest degradation,low biomass ranges,low impact selective logging,multispectral RapidEye image,multitemporal L-band SAR data,multitemporal X-band SAR data,optical data,regression models,spectral unmixed fractions,tropical forested peatland area,tropical peat swamp forests,Aboveground biomass (AGB),REDD+,RapidEye,SAR,regression modeling
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