Information fusion approach for biomass estimation in a plateau mountainous forest using a synergistic system comprising UAS-based digital camera and LiDAR
Rong Huang, Wei Yao, Zhong Xu, Lin Cao, Xin Shen

TL;DR
This study presents a cost-effective method combining UAS-based digital imagery and LiDAR to accurately estimate forest biomass in mountainous regions, leveraging their complementary strengths for large-scale mapping.
Contribution
It introduces a novel synergistic system using UAS-based digital aerial photogrammetry and LiDAR for efficient biomass estimation in complex terrains.
Findings
High-resolution canopy height models were generated using combined DAP and LiDAR data.
The method achieved accurate biomass estimation with reduced costs.
Synergistic use of UAS-based digital imagery and LiDAR enhances large-scale forest monitoring.
Abstract
Forest land plays a vital role in global climate, ecosystems, farming and human living environments. Therefore, forest biomass estimation methods are necessary to monitor changes in the forest structure and function, which are key data in natural resources research. Although accurate forest biomass measurements are important in forest inventory and assessments, high-density measurements that involve airborne light detection and ranging (LiDAR) at a low flight height in large mountainous areas are highly expensive. The objective of this study was to quantify the aboveground biomass (AGB) of a plateau mountainous forest reserve using a system that synergistically combines an unmanned aircraft system (UAS)-based digital aerial camera and LiDAR to leverage their complementary advantages. In this study, we utilized digital aerial photogrammetry (DAP), which has the unique advantages of…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Forest Ecology and Biodiversity Studies · Forest Management and Policy
MethodsConvolutional Hough Matching
