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Detection of European Aspen (Populus tremula L.) Based on an Unmanned Aerial Vehicle Approach in Boreal Forests

Authors :
Kuzmin, Anton
Korhonen, Lauri
Kivinen, Sonja
Hurskainen, Pekka
Korpelainen, Pasi
Tanhuanpää, Topi
Maltamo, Matti
Vihervaara, Petteri
Kumpula, Timo
MDPI AG
Earth Change Observation Laboratory (ECHOLAB)
Department of Geosciences and Geography
Department of Forest Sciences
Source :
Remote Sensing, Vol 13, Iss 1723, p 1723 (2021), Aspen Bibliography
Publication Year :
2021
Publisher :
MDPI AG, 2021.

Abstract

European aspen (Populus tremula L.) is a keystone species for biodiversity of boreal forests.Large-diameter aspens maintain the diversity of hundreds of species, many of which are threatened in Fennoscandia. Due to a low economic value and relatively sparse and scattered occurrence of aspen in boreal forests, there is a lack of information of the spatial and temporal distribution of aspen, which hampers efficient planning and implementation of sustainable forest management practices and conservation efforts. Our objective was to assess identification of European aspen at the individual tree level in a southern boreal forest using high-resolution photogrammetric point cloud (PPC) and multispectral (MSP) orthomosaics acquired with an unmanned aerial vehicle (UAV). The structure-from-motion approach was applied to generate RGB imagery-based PPC to be used for individual tree-crown delineation. Multispectral data were collected using two UAV cameras:Parrot Sequoia and MicaSense RedEdge-M. Tree-crown outlines were obtained from watershed segmentation of PPC data and intersected with multispectral mosaics to extract and calculate spectral metrics for individual trees. We assessed the role of spectral data features extracted from PPC and multispectral mosaics and a combination of it, using a machine learning classifier—Support Vector Machine (SVM) to perform two different classifications: discrimination of aspen from the other species combined into one class and classification of all four species (aspen, birch, pine, spruce) simultaneously. In the first scenario, the highest classification accuracy of 84% (F1-score) for aspen and overall accuracy of 90.1% was achieved using only RGB features from PPC, whereas in the second scenario, the highest classification accuracy of 86 % (F1-score) for aspen and overall accuracy of 83.3% was achieved using the combination of RGB and MSP features. The proposed method provides a new possibility for the rapid assessment of aspen occurrence to enable more efficient forest management as well as contribute to biodiversity monitoring and conservation efforts in boreal forests. peerReviewed

Details

Language :
English
ISSN :
20724292
Volume :
13
Issue :
1723
Database :
OpenAIRE
Journal :
Remote Sensing
Accession number :
edsair.dedup.wf.001..35a48ca8578026df44a772d12ab7384d