Abstract
Mangrove forests, occupying tropical and subtropical coastal areas,
serve as coast protector, water filter, spot of attraction and an
exceptional carbon reservoir. Despite these extraordinary ecological and
economic functions, our understanding of the mangroves is limited
because field survey is hard to conduct in the intertidal mangrove
habitats. While satellite remote sensing provides good spatial and
temporal coverages globally, data availability at the tropical latitudes
is limited due to frequent cloud contamination. The quickly emerging
unmanned aerial vehicle (UAV) technique enables data collection under
almost all weather conditions, thus provides new opportunities. By
mounting light detection and ranging (LiDAR) sensors on UAVs, the 3D
structure of mangroves can be accurately characterized even at
individual tree level. The basic tree parameters such as tree height and
crown size can be easily extracted, which then enables the estimation of
biomass, carbon stock and other important ecological indices. This study
uses high density (>100 pt/m2) UAV-LiDAR data collected at
four consecutive years to detect the growth rate and pattern of
mangroves. The change detection is done at individual tree level. The
dependence of mangrove growth pattern on tree species and clumpingness
are analyzed. The output will allow scientists and environment managers
to know mangroves better and to manage them effectively and efficiently.