Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest
Airborne laser scanning is a promising technique for efficient and accurate, remote-based forest inventory, due to its capacity for direct measurement of the three-dimensional structure of vegetation. The main objective of this study was to test the usability and accuracy of an individual tree detec...
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doaj-d99bf5121be34161a78a789641ebaf8d2020-11-25T00:59:11ZengMDPI AGForests1999-49072016-12-0171230710.3390/f7120307f7120307Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous ForestIvan Sačkov0Giovanni Santopuoli1Tomáš Bucha2Bruno Lasserre3Marco Marchetti4National Forest Centre-Forest Research Institute Zvolen, T. G. Masaryka 22, Zvolen 96092, SlovakiaDepartment of Biosciences and Territory, University of Molise, C.da Fonte Lappone, Pesche 86090, ItalyNational Forest Centre-Forest Research Institute Zvolen, T. G. Masaryka 22, Zvolen 96092, SlovakiaDepartment of Biosciences and Territory, University of Molise, C.da Fonte Lappone, Pesche 86090, ItalyDepartment of Biosciences and Territory, University of Molise, C.da Fonte Lappone, Pesche 86090, ItalyAirborne laser scanning is a promising technique for efficient and accurate, remote-based forest inventory, due to its capacity for direct measurement of the three-dimensional structure of vegetation. The main objective of this study was to test the usability and accuracy of an individual tree detection approach, using reFLex software, in the evaluation of forest variables. The accuracy assessment was conducted in a selected type of multilayered deciduous forest in southern Italy. Airborne laser scanning data were taken with a YellowScan Mapper scanner at an average height of 150 m. Point density reached 30 echoes per m2, but most points belonged to the first echo. The ground reference data contained the measured positions and dimensions of 445 trees. Individual tree-detection rates were 66% for dominant, 48% for codominant, 18% for intermediate, and 5% for suppressed trees. Relative root mean square error for tree height, diameter, and volume reached 8.2%, 21.8%, and 45.7%, respectively. All remote-based tree variables were strongly correlated with the ground data (R2 = 0.71–0.79). At the stand-level, the results show that differences ranged between 4% and 17% for stand height and 22% and 40% for stand diameter. The total growing stock differed by −43% from the ground reference data, and the ratios were 64% for dominant, 58% for codominant, 36% for intermediate, and 16% for suppressed trees.http://www.mdpi.com/1999-4907/7/12/307forest inventoryLiDARindividual tree detection approach |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ivan Sačkov Giovanni Santopuoli Tomáš Bucha Bruno Lasserre Marco Marchetti |
spellingShingle |
Ivan Sačkov Giovanni Santopuoli Tomáš Bucha Bruno Lasserre Marco Marchetti Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest Forests forest inventory LiDAR individual tree detection approach |
author_facet |
Ivan Sačkov Giovanni Santopuoli Tomáš Bucha Bruno Lasserre Marco Marchetti |
author_sort |
Ivan Sačkov |
title |
Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest |
title_short |
Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest |
title_full |
Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest |
title_fullStr |
Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest |
title_full_unstemmed |
Forest Inventory Attribute Prediction Using Lightweight Aerial Scanner Data in a Selected Type of Multilayered Deciduous Forest |
title_sort |
forest inventory attribute prediction using lightweight aerial scanner data in a selected type of multilayered deciduous forest |
publisher |
MDPI AG |
series |
Forests |
issn |
1999-4907 |
publishDate |
2016-12-01 |
description |
Airborne laser scanning is a promising technique for efficient and accurate, remote-based forest inventory, due to its capacity for direct measurement of the three-dimensional structure of vegetation. The main objective of this study was to test the usability and accuracy of an individual tree detection approach, using reFLex software, in the evaluation of forest variables. The accuracy assessment was conducted in a selected type of multilayered deciduous forest in southern Italy. Airborne laser scanning data were taken with a YellowScan Mapper scanner at an average height of 150 m. Point density reached 30 echoes per m2, but most points belonged to the first echo. The ground reference data contained the measured positions and dimensions of 445 trees. Individual tree-detection rates were 66% for dominant, 48% for codominant, 18% for intermediate, and 5% for suppressed trees. Relative root mean square error for tree height, diameter, and volume reached 8.2%, 21.8%, and 45.7%, respectively. All remote-based tree variables were strongly correlated with the ground data (R2 = 0.71–0.79). At the stand-level, the results show that differences ranged between 4% and 17% for stand height and 22% and 40% for stand diameter. The total growing stock differed by −43% from the ground reference data, and the ratios were 64% for dominant, 58% for codominant, 36% for intermediate, and 16% for suppressed trees. |
topic |
forest inventory LiDAR individual tree detection approach |
url |
http://www.mdpi.com/1999-4907/7/12/307 |
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