Article
Details
Citation
Wang M, Zhang W, Ji Y, Marino A, Xu K, Zhao L, Shi J & Zhao H (2023) Aboveground Biomass Retrieval in Tropical and Boreal Forests Using L-Band Airborne Polarimetric Observations. Forests, 14 (5), p. 887. https://doi.org/10.3390/f14050887
Abstract
Forests play a crucial part in regulating global climate change since their aboveground biomass (AGB) relates to the carbon cycle, and its changes affect the main carbon pools. At present, the most suitable available SAR data for wall-to-wall forest AGB estimation are exploiting an L-band polarimetric SAR. However, the saturation issues were reported for AGB estimation using L-band backscatter coefficients. Saturation varies depending on forest structure. Polarimetric information has the capability to identify different aspects of forest structure and therefore shows great potential for reducing saturation issues and improving estimation accuracy. In this study, 121 polarimetric decomposition observations, 10 polarimetric backscatter coefficients and their derived observations, and six texture features were extracted and applied for forest AGB estimation in a tropical forest and a boreal forest. A parametric feature optimization inversion model (Multiple linear stepwise regression, MSLR) and a nonparametric feature optimization inversion model (fast iterative procedure integrated into a K-nearest neighbor nonparameter algorithm, KNNFIFS) were used for polarimetric features optimization and forest AGB inversion. The results demonstrated the great potential of L-band polarimetric features for forest AGB estimation. KNNFIFS performed better both in tropical (R2 = 0.80, RMSE = 22.55 Mg/ha, rRMSE = 14.59%, MA%E = 12.21%) and boreal (R2 = 0.74, RMSE = 19.82 Mg/ha, rRMSE = 20.86%, MA%E = 20.19%) forests. Non-model-based polarimetric features performed better compared to features extracted by backscatter coefficients, model-based decompositions, and texture. Polarimetric observations also revealed site-dependent performances.
Keywords
Forestry
Journal
Forests: Volume 14, Issue 5
Status | Published |
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Funders | National Natural Science Foundation of China, National Natural Science Foundation of China, National Natural Science Foundation of China and Agriculture joint special project of Yunnan province |
Publication date online | 26/04/2023 |
Date accepted by journal | 24/04/2023 |
URL | http://hdl.handle.net/1893/35481 |
Publisher | MDPI AG |
ISSN of series | 1999-4907 |
People (1)
Associate Professor, Biological and Environmental Sciences