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2025
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Estimation of Forest Stand Height Based on Individual Tree Detection Using UAV Laser Scanning Data
IGARSS 2025 - 2025 IEEE International Geoscience and Remote Sensing Symposium,
2025
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Spatial–Spectral–Temporal Deep Regression Model With Convolutional Long Short-Term Memory and Transformer for the Large-Area Mapping of Mangrove Canopy Height by Using Sentinel-1 and Sentinel-2 Data
IEEE Transactions on Geoscience and Remote Sensing,
2024
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Local Governance of Peatland Restoration in Riau, Indonesia
Global Environmental Studies,
2023
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Financial Analysis of Potential Carbon Value over 14 Years of Forest Restoration by the Framework Species Method
Forests,
2022
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Influence of Site-Specific Conditions on Estimation of Forest above Ground Biomass from Airborne Laser Scanning
Forests,
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Canopy Height Estimation Using Sentinel Series Images through Machine Learning Models in a Mangrove Forest
Remote Sensing,
2020
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Estimation of Tree Height by Combining Low Density Airborne LiDAR Data and Images Using the 3D Tree Model: A Case Study in a Subtropical Forest in China
Forests,
2020
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Discrimination of Canopy Structural Types in the Sierra Nevada Mountains in Central California
Remote Sensing,
2019
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Tree height explains stand volume of closed-canopy stands: Evidence from forest inventory data of China
Forest Ecology and Management,
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