Detailed tree inventory and area coverage of remote mangrove forests (species: Pelliciera rhizophorae and Rhizophora mangle) in the Utría National Park in the Colombian Pacific Coast

This dataset contains detailed inventories of 7 large plots of mangrove forests in the Utría National Park in the Colombian Pacific Coast. The inventory consists of individual geo-referenced tree masks for the endemic Pelliciera rhizophorae species (/pelliciera_trees/Pelliciera.shp), and area coverages for the Rhizophora mangle species, as well as Mud and Water areas (/other_classes_coverage/.tiff). For each individual tree of the Pelliciera rhizophorae species we provide the predicted height, crown diameter and crown area (/pelliciera_trees/trees.csv). We also provide the cover area of the other predicted classes (/other_area_coverage/area_coverages.csv). The inventories were automatically produced with trained Artificial Intelligence (AI) algorithms. The algorithms were trained with orthomosaic images and digital surface models (DSMs) produced from Unoccupied Aerial System (UAS) imagery with Structure-from-Motion software, both paired with expert annotations of the trees and areas (/annotations/.shp). In this dataset we provide all the input data for the algorithms, as well as the predicted geo-referenced data products, such as: predicted Pelliciera rhizophorae tree masks, Rhizophora mangle areas, Water areas, Mud areas, canopy height models (CHM), digital elevation models (DEM), digital terrain models (DTM) and various ancillary images. We also provide the initial orthomosaic files (/orthomosaic.tif) and the DSM files (/DSM.tif), that were produced with SfM software Agisoft Metashape v1.6.2 from the aerial footage captured in 2019 (19–22 February) using two consumer-grade UASs: the DJI Phantom 4 and DJI Mavic Pro (SZ DJI Technology Co., Ltd—Shenzhen, China). The DJI Phantom 4 has an integrated photo camera, the DJI FC330 and the DJI Mavic Pro was equipped with the integrated DJI FC220. The flights were programmed to follow the trajectories in an automated mode by means of the commercial application "DroneDeploy". Ground control points (GCPs) were positioned in the field, and their geographic location was acquired. We used two single-band global navigation satellite system (GNSS) receivers: an Emlid Reach RS+ single-band real-time kinematics (RTK) GNSS receiver (Emlid Tech Kft.—Budapest, Hungary) as a base station, and a Bad Elf GNSS Surveyor handheld GPS (Bad Elf, LLC—West Hartford, AZ, USA). RINEX static data from the base station was processed with the Precise Point Positioning Service (PPP) of the Natural Resources of Canada, while rover position was processed using the RTKLib software through a post processed kinematics (PPK) workflow. The final absolute positional accuracy of the products is below one meter because the results of the PPP workflow has a positional accuracy between 0.2 m and 1 m.

Data and Resources

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Cite this as

Schürholz, Daniel, Castellanos-Galindo, Gustavo Adolfo, Casella, Elisa, Mejía-Rentería, Juan Carlos, Chennu, Arjun (2023). Dataset: Detailed tree inventory and area coverage of remote mangrove forests (species: Pelliciera rhizophorae and Rhizophora mangle) in the Utría National Park in the Colombian Pacific Coast. https://doi.org/10.1594/PANGAEA.962229

DOI retrieved: 2023

Additional Info

Field Value
Imported on November 30, 2024
Last update November 30, 2024
License CC-BY-4.0
Source https://doi.org/10.1594/PANGAEA.962229
Author Schürholz, Daniel
Given Name Daniel
Family Name Schürholz
More Authors
Castellanos-Galindo, Gustavo Adolfo
Casella, Elisa
Mejía-Rentería, Juan Carlos
Chennu, Arjun
Source Creation 2023
Publication Year 2023
Subject Areas
Name: LandSurface

Related Identifiers
Title: Seeing the Forest for the Trees: Mapping Cover and Counting Trees from Aerial Images of a Mangrove Forest Using Artificial Intelligence
Identifier: https://doi.org/10.3390/rs15133334
Type: DOI
Relation: References
Year: 2023
Source: Remote Sensing
Authors: Schürholz Daniel , Castellanos-Galindo Gustavo Adolfo , Casella Elisa , Mejía-Rentería Juan Carlos , Chennu Arjun .