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Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models
by
Atesoglu, Ayhan
, Ok, Ali Ozgun
, Ozdarici-Ok, Asli
, Zeybek, Mustafa
in
Automation
/ Cloud computing
/ Coniferous forests
/ Digital Surface Model (DSM)
/ enhanced local maxima
/ Euclidean geometry
/ Evergreen trees
/ Methodology
/ Pine
/ Pine trees
/ Pinus pinea
/ Pixels
/ probabilistic local minima
/ Seeds
/ Statistical analysis
/ Stone pine trees
/ Trees
/ Unmanned Aerial Vehicle (UAV)
/ Unmanned aerial vehicles
2024
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Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models
by
Atesoglu, Ayhan
, Ok, Ali Ozgun
, Ozdarici-Ok, Asli
, Zeybek, Mustafa
in
Automation
/ Cloud computing
/ Coniferous forests
/ Digital Surface Model (DSM)
/ enhanced local maxima
/ Euclidean geometry
/ Evergreen trees
/ Methodology
/ Pine
/ Pine trees
/ Pinus pinea
/ Pixels
/ probabilistic local minima
/ Seeds
/ Statistical analysis
/ Stone pine trees
/ Trees
/ Unmanned Aerial Vehicle (UAV)
/ Unmanned aerial vehicles
2024
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Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models
by
Atesoglu, Ayhan
, Ok, Ali Ozgun
, Ozdarici-Ok, Asli
, Zeybek, Mustafa
in
Automation
/ Cloud computing
/ Coniferous forests
/ Digital Surface Model (DSM)
/ enhanced local maxima
/ Euclidean geometry
/ Evergreen trees
/ Methodology
/ Pine
/ Pine trees
/ Pinus pinea
/ Pixels
/ probabilistic local minima
/ Seeds
/ Statistical analysis
/ Stone pine trees
/ Trees
/ Unmanned Aerial Vehicle (UAV)
/ Unmanned aerial vehicles
2024
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Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models
Journal Article
Automated extraction and validation of Stone Pine (Pinus pinea L.) trees from UAV-based digital surface models
2024
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Overview
Stone Pine (Pinus pinea L.) is currently the pine species with the highest commercial value with edible seeds. In this respect, this study introduces a new methodology for extracting Stone Pine trees from Digital Surface Models (DSMs) generated through an Unmanned Aerial Vehicle (UAV) mission. We developed a novel enhanced probability map of local maxima that facilitates the computation of the orientation symmetry by means of new probabilistic local minima information. Four test sites are used to evaluate our automated framework within one of the most important Stone Pine forest areas in Antalya, Turkey. A Hand-held Mobile Laser Scanner (HMLS) was utilized to collect the reference point cloud dataset. Our findings confirm that the proposed methodology, which uses a single DSM as an input, secures overall pixel-based and object-based F
1
-scores of 88.3% and 97.7%, respectively. The overall median Euclidean distance revealed between the automatically extracted stem locations and the manually extracted ones is computed to be 36 cm (less than 4 pixels), demonstrating the effectiveness and robustness of the proposed methodology. Finally, the comparison with the state-of-the-art reveals that the outcomes of the proposed methodology outperform the results of six previous studies in this context.
Publisher
Taylor & Francis,Taylor & Francis Ltd,Academy of Land Registry and Cadastre,Ankara Haci Bayram Veli University,Ankara,Turkey%Department of Geomatics Engineering,Hacettepe University,Ankara,Turkey%Land Registry and Cadastre,Selcuk University,Konya,Turkey%Department of Forest Engineering,Bartin University,Bartin,Turkey,Taylor & Francis Group
Subject
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