Title
Identifying and quantifying the abundance of economically important palms in tropical moist forest using UAV imagery
Date Issued
01 January 2020
Access level
open access
Resource Type
journal article
Publisher(s)
MDPI AG
Abstract
Sustainable management of non-timber forest products such as palm fruits is crucial for the long-term conservation of intact forest. A major limitation to expanding sustainable management of palms has been the need for precise information about the resources at scales of tens to hundreds of hectares, while typical ground-based surveys only sample small areas. In recent years, small unmanned aerial vehicles (UAVs) have become an important tool for mapping forest areas as they are cheap and easy to transport, and they provide high spatial resolution imagery of remote areas. We developed an object-based classification workflow for RGB UAV imagery which aims to identify and delineate palm tree crowns in the tropical rainforest by combining image processing and GIS functionalities using color and textural information in an integrative way to show one of the potential uses of UAVs in tropical forests. Ten permanent forest plots with 1170 reference palm trees were assessed from October to December 2017. The results indicate that palm tree crowns could be clearly identified and, in some cases, quantified following the workflow. The best results were obtained using the random forest classifier with an 85% overall accuracy and 0.82 kappa index.
Volume
12
Issue
1
Language
English
OCDE Knowledge area
Forestal
Scopus EID
2-s2.0-85079676519
Source
Remote Sensing
ISSN of the container
20724292
Source funding
Gordon and Betty Moore Foundation
Sponsor(s)
Acknowledgments: This study was supported by the IIAP (BIOINFO and PROBOSQUES research programmes), with special thanks to Americo Sanchez and Dennis Del Castillo for their assistance. We would like to thank Jhon Del Aguila, Julio Irarica, Hugo Vásques and Rider Flores for their help while conducting fieldwork. The fieldwork campaign for this research was funded by the Gordon and Betty Moore Foundation through the grant 'Monitoring Protected Areas in Peru to Increase Forest Resilience to Climate Change' (MonANPeru) led by T.R.B. IIAP contributed to the cost of equipment acquisition. Funding to X.T. from the Russel E. Train Education for Nature Program (EFN) from WWF, Wageningen University and the FONDECYT grant agreement 219-2018 contributed to the analysis and completion of the manuscript. This study was supported by the IIAP (BIOINFO and PROBOSQUES research programmes), with special thanks to Americo Sanchez and Dennis Del Castillo for their assistance. We would like to thank Jhon Del Aguila, Julio Irarica, Hugo Vásques and Rider Flores for their help while conducting fieldwork.
Sources of information: Directorio de Producción Científica Scopus