Wall-to-wall above-ground biomass estimation with alos-2 palsar-2 l-band sar data and gedi

Yu Zhao,Xin Guo, Liheng Zhong,Jian Wang,Jingdong Chen

IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM(2023)

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摘要
Under the impact of climate change, monitoring forest carbon stock becomes an important task to evaluate the changes in carbon sequestrated from the atmosphere. Forest carbon stock estimation is still a challenging task, due to limited data sources that have a high correlation with above-ground biomass. With the help of the NASA Global Ecosystem Dynamics Investigation (GEDI) mission, above-ground biomass (AGB) can be measured by using the LiDAR data provided. However, GEDI data is sparse since it only samples about 4% of the Earth's land surface between 51.6 degrees N&S. Previous studies demonstrated L-Band SAR's promising ability in retrieving forest stem volumes and estimating above-ground biomass. In this work, we propose a Deep Learning based workflow which utilizes PALSAR-2 L-Band images and GEDI to generate wall-to-wall above-ground biomass maps of North America. The workflow uses Convolutional Neural Network as the DL model and leverages both PALSAR-2 L-Band images and GEDI Relative Heights data to estimate the dense above-ground biomass maps. The results show that, by fusing GEDI Level 2 Relative Heights data with PALSAR2 L-Band SAR data, it is possible to achieve a significantly high correlation with GEDI level 4 AGB data, as the final R-squared score of our model is as high as 0.83.
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关键词
ALOS-2 PALSAR-2,Above Ground Biomass,GEDI,PALSAR,Deep Learning
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