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Canopy Height Estimation in French Guiana with LiDAR ICESat/GLAS Data Using Principal Component Analysis and Random Forest Regressions.

, , , , , , , and . Remote Sensing, 6 (12): 11883-11914 (2014)

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Regional Scale Rain-Forest Height Mapping Using Regression-Kriging of Spaceborne and Airborne LiDAR Data: Application on French Guiana., , , , , , , , and . Remote Sensing, 8 (3): 240 (2016)Inverting Aboveground Biomass-Canopy Texture Relationships in a Landscape of Forest Mosaic in the Western Ghats of India Using Very High Resolution Cartosat Imagery., , , , , , , , , and . Remote Sensing, 9 (3): 228 (2017)Regional scale rain-forest height mapping using regression-kriging of spaceborne and airborne LiDAR data: Application on French Guiana., , , , , , , , and . IGARSS, page 4109-4112. IEEE, (2015)Regional scale rain-forest height mapping using regression-kriging of spaceborne and airborne LiDAR data: Application on French Guiana., , , , , , , , and . IGARSS, page 4109-4112. IEEE, (2015)Template Phenology for Vegetation Models., , , , , , , , and . IGARSS (4), page 1042-1045. IEEE, (2009)Canopy Height Estimation in French Guiana with LiDAR ICESat/GLAS Data Using Principal Component Analysis and Random Forest Regressions., , , , , , , and . Remote Sensing, 6 (12): 11883-11914 (2014)Canopy height estimation in French Guiana using LiDAR ICESat/GLAS data., , , , , , and . IGARSS, page 1337-1340. IEEE, (2014)Coupling potential of ICESat/GLAS and SRTM for the discrimination of forest landscape types in French Guiana., , , , , , and . IGARSS, page 2046-2049. IEEE, (2014)Equatorial Forests Display Distinct Trends in Phenological Variation: A Time-Series Analysis of Vegetation Index Data from Three Continents., , , , , , and . IEEE J Sel. Topics in Appl. Earth Observ. and Remote Sensing, 9 (8): 3505-3511 (2016)Exploring the Biophysical Drivers of Amazon Phenology: Preparing Data Sets to Improve Dynamic Global Vegetation Models., , , , , , , and . IGARSS (2), page 137-140. IEEE, (2008)