Quantifying understory vegetation density using multi-temporal Sentinel-2 and GEDI LiDAR data

Understory vegetation contributes considerably to biodiversity and total aboveground biomass of forest ecosystems. Whereas field inventories and LiDAR data are generally used to estimate understory vegetation density, methods for large-scale and spatially continuous estimation of understory vegetati...

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Veröffentlicht in:GIScience and remote sensing 2022-12, Vol.59 (1), p.2068-2083
Hauptverfasser: Xi, Yanbiao, Tian, Qingjiu, Zhang, Wenmin, Zhang, Zhichao, Tong, Xiaoye, Brandt, Martin, Fensholt, Rasmus
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Sprache:eng
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Zusammenfassung:Understory vegetation contributes considerably to biodiversity and total aboveground biomass of forest ecosystems. Whereas field inventories and LiDAR data are generally used to estimate understory vegetation density, methods for large-scale and spatially continuous estimation of understory vegetation density are still lacking. For an evergreen coniferous forest area in southern China, we developed and tested an effective and practical remote sensing-driven approach for mapping understory vegetation, based on phenological differences between over and understory vegetation. Specifically, we used plant area volume density (PAVD) calculations based on GEDI data to train a support vector regression model and subsequently estimated the understory vegetation density from Sentinel-2 derived metrics. We produced maps of PAVD for the growing and non-growing season respectively, both performing well compared against independent GEDI samples (R 2  = 0.89 and 0.93, p
ISSN:1548-1603
1943-7226
DOI:10.1080/15481603.2022.2148338