Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters

In this study, a new method was validated for the first time that predicts stem attributes for a forest area without any manual measurements of tree stems by combining harvester measurements and Airborne Laser Scanning (ALS) data. A new algorithm for automatic segmentation of tree cro...

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Main Authors: Holmgren, Johan, Barth, Andreas, Larsson, Henrik, Olsson, Håkan
Format: Article
Language:English
Published: Finnish Society of Forest Science 2012-01-01
Series:Silva Fennica
Online Access:https://www.silvafennica.fi/article/56
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spelling doaj-dbbce9adcc5340259fe32ae353fc137b2020-11-25T02:37:37ZengFinnish Society of Forest ScienceSilva Fennica2242-40752012-01-0146210.14214/sf.56Prediction of stem attributes by combining airborne laser scanning and measurements from harvestersHolmgren, JohanBarth, AndreasLarsson, HenrikOlsson, Håkan In this study, a new method was validated for the first time that predicts stem attributes for a forest area without any manual measurements of tree stems by combining harvester measurements and Airborne Laser Scanning (ALS) data. A new algorithm for automatic segmentation of tree crowns from ALS data based on tree crown models was developed. The test site was located in boreal forest (64°06âN, 19°10âE) dominated by Norway spruce (Picea abies) and Scots Pine (Pinus sylvestris).The trees were harvested on field plots, and each harvested tree was linked to the nearest tree crown segment derived from ALS data. In this way, a reference database was created with both stem data from the harvester and ALS derived features for linked tree crowns. To estimate stem attributes for a tree crown segment in parts of the forest where trees not yet have been harvested, tree stems are imputed from the most similar crown segment in the reference database according to features extracted from ALS data. The imputation of harvester data was validated on a sub-stand-level, i.e. 2â4 aggregated 10 m radius plots, and the obtained RMSE of stem volume, mean tree height, mean stem diameter, and stem density (stems per ha) estimates were 11%, 8%, 12%, and 19%, respectively. The imputation of stem data collected by harvesters could in the future be used for bucking simulations of not yet harvested forest stands in order to predict wood assortments.https://www.silvafennica.fi/article/56
collection DOAJ
language English
format Article
sources DOAJ
author Holmgren, Johan
Barth, Andreas
Larsson, Henrik
Olsson, Håkan
spellingShingle Holmgren, Johan
Barth, Andreas
Larsson, Henrik
Olsson, Håkan
Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
Silva Fennica
author_facet Holmgren, Johan
Barth, Andreas
Larsson, Henrik
Olsson, Håkan
author_sort Holmgren, Johan
title Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
title_short Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
title_full Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
title_fullStr Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
title_full_unstemmed Prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
title_sort prediction of stem attributes by combining airborne laser scanning and measurements from harvesters
publisher Finnish Society of Forest Science
series Silva Fennica
issn 2242-4075
publishDate 2012-01-01
description In this study, a new method was validated for the first time that predicts stem attributes for a forest area without any manual measurements of tree stems by combining harvester measurements and Airborne Laser Scanning (ALS) data. A new algorithm for automatic segmentation of tree crowns from ALS data based on tree crown models was developed. The test site was located in boreal forest (64°06âN, 19°10âE) dominated by Norway spruce (Picea abies) and Scots Pine (Pinus sylvestris).The trees were harvested on field plots, and each harvested tree was linked to the nearest tree crown segment derived from ALS data. In this way, a reference database was created with both stem data from the harvester and ALS derived features for linked tree crowns. To estimate stem attributes for a tree crown segment in parts of the forest where trees not yet have been harvested, tree stems are imputed from the most similar crown segment in the reference database according to features extracted from ALS data. The imputation of harvester data was validated on a sub-stand-level, i.e. 2â4 aggregated 10 m radius plots, and the obtained RMSE of stem volume, mean tree height, mean stem diameter, and stem density (stems per ha) estimates were 11%, 8%, 12%, and 19%, respectively. The imputation of stem data collected by harvesters could in the future be used for bucking simulations of not yet harvested forest stands in order to predict wood assortments.
url https://www.silvafennica.fi/article/56
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