AUTHOR=Xia Cuifen , Zhou Wenwu , Shu Qingtai , Wu Zaikun , Wang Mingxing , Xu Li , Yang Zhengdao , Yu Jinge , Song Hanyue , Duan Dandan TITLE=Unlocking vegetation health: optimizing GEDI data for accurate chlorophyll content estimation JOURNAL=Frontiers in Plant Science VOLUME=Volume 15 - 2024 YEAR=2024 URL=https://www.frontiersin.org/journals/plant-science/articles/10.3389/fpls.2024.1492560 DOI=10.3389/fpls.2024.1492560 ISSN=1664-462X ABSTRACT=Chlorophyll content serves as a vital indicator for evaluating vegetation health and estimating productivity. This study aims to effectively tackle the issue of GEDI data discreteness and explore its potential in estimating chlorophyll content. This study used the EBKRP method to obtain the continuous distribution of GEDI spot parameters in an unknown space. Initially, 52 measured sample data were employed to screen the modeling parameters with the Pearson and RF methods. Next, BO algorithm was applied to optimize the KNN regression model, RFR model, and GBRT model. These steps were taken to establish the most effective RS estimation model for chlorophyll content in Dendrocalamus giganteus (D. giganteus). The results showed that: (1) The R2 of EBKRP method was 0.34~0.99, RMSE was 0.012~3134.005, rRMSE was 0.011~0.854, and CRPS was 965.492~1626.887. (2) The Pearson method selects five parameters (cover, pai, fhd_normal, rv, and rx_energy_a3) with a correlation greater than 0.37. The RF method opts for five parameters (cover, fhd_normal, sensitivity, rh100, and modis_nonvegetated) with a contribution threshold greater than 5.5%. (3) The BO-GBRT model in the RF method was used as the best estimation model (R2 = 0.86, RMSE = 0.219 g/m2, rRMSE = 0.167 g/m2, P = 84.13%) to estimate and map the chlorophyll content of D. giganteus in the study area. The distribution range is 0.20 g/m2~2.50 g/m2. The findings aligned with the distribution of D. giganteus in the experimental area, indicating the reliability of estimating forest biochemical parameters GEDI data.