Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/135462
Title: Performance of Individual Tree Segmentation Algorithms in Forest Ecosystems Using UAV LiDAR Data
Authors: Marcello Ruiz, Francisco Javier 
Spínola, María
Albors, Laia
Marqués, Ferran
Rodríguez Esparragón, Dionisio 
Eugenio González, Francisco 
UNESCO Clasification: 3325 Tecnología de las telecomunicaciones
Keywords: LiDAR
ULS
DEM
CHM
tree segmentation, et al
Issue Date: 2024
Project: “Análisis del cambio global en los Parques Nacionales Macaronésicos mediante teledetección multiplataforma y nuevas metodologías de procesado de datos”, Organismo Autónomo Parques Nacionales (Proyecto SPIP2022-02897)
Journal: Drones 
Abstract: Forests are crucial for biodiversity, climate regulation, and hydrological cycles, requiring sustainable management due to threats like deforestation and climate change. Traditional forest monitoring methods are labor-intensive and limited, whereas UAV LiDAR offers detailed three-dimensional data on forest structure and extensive coverage. This study primarily assesses individual tree segmentation algorithms in two forest ecosystems with different levels of complexity using high-density LiDAR data captured by the Zenmuse L1 sensor on a DJI Matrice 300RTK platform. The processing methodology for LiDAR data includes preliminary preprocessing steps to create Digital Elevation Models, Digital Surface Models, and Canopy Height Models. A comprehensive evaluation of the most effective techniques for classifying ground points in the LiDAR point cloud and deriving accurate models was performed, concluding that the Triangular Irregular Network method is a suitable choice. Subsequently, the segmentation step is applied to enable the analysis of forests at the individual tree level. Segmentation is crucial for monitoring forest health, estimating biomass, and understanding species composition and diversity. However, the selection of the most appropriate segmentation technique remains a hot research topic with a lack of consensus on the optimal approach and metrics to be employed. Therefore, after the review of the state of the art, a comparative assessment of four common segmentation algorithms (Dalponte2016, Silva2016, Watershed, and Li2012) was conducted. Results demonstrated that the Li2012 algorithm, applied to the normalized 3D point cloud, achieved the best performance with an F1-score of 91% and an IoU of 83%
URI: http://hdl.handle.net/10553/135462
ISSN: 2504-446X
DOI: 10.3390/drones8120772
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