Using multispectral ALS for tree species identification

Accurate and large area tree species classification is an important subject with problems that have not yet been completely solved. For both nature conservation and wood production purposes, a detailed description of tree species composition would be useful. The objective of this master’s thesis is t...

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Autor principal: Axelsson, Arvid
Formato: Second cycle, A2E
Lenguaje:sueco
Inglés
Publicado: 2019
Materias:
Acceso en línea:https://stud.epsilon.slu.se/14193/
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author Axelsson, Arvid
author_browse Axelsson, Arvid
author_facet Axelsson, Arvid
author_sort Axelsson, Arvid
collection Epsilon Archive for Student Projects
description Accurate and large area tree species classification is an important subject with problems that have not yet been completely solved. For both nature conservation and wood production purposes, a detailed description of tree species composition would be useful. The objective of this master’s thesis is to explore how tree species differ in spectral and structural properties using multispectral airborne laser scanning data from the Optech Titan X system. Remote sensing data was gathered from Remningstorp, Västra Götaland in Sweden on 21st July 2016. Field data contained 179 solitary trees from nine species. Two new methods for feature extraction are tested and compared to features of height and intensity distributions. The features that were most important for tree species classification were those from the upper part of the crown. Spectral features provided a better basis for tree species classification than structural features. Using single, first or all returns gave only a small difference in cross-validation correctness rate. The best classification model was created using multispectral distribution features of all returns, with an correctness rate of 77.09 %. Spruce and pine had a 100 % overall classification accuracy and were not confused with any other species. Linden was the deciduous species with a large sample that was most frequently confused with many other deciduous species.
format Second cycle, A2E
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institution Swedish University of Agricultural Sciences
language Swedish
Inglés
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spelling RepoSLU141932020-06-04T12:30:25Z https://stud.epsilon.slu.se/14193/ Using multispectral ALS for tree species identification Axelsson, Arvid Forestry - General aspects Forestry production Accurate and large area tree species classification is an important subject with problems that have not yet been completely solved. For both nature conservation and wood production purposes, a detailed description of tree species composition would be useful. The objective of this master’s thesis is to explore how tree species differ in spectral and structural properties using multispectral airborne laser scanning data from the Optech Titan X system. Remote sensing data was gathered from Remningstorp, Västra Götaland in Sweden on 21st July 2016. Field data contained 179 solitary trees from nine species. Two new methods for feature extraction are tested and compared to features of height and intensity distributions. The features that were most important for tree species classification were those from the upper part of the crown. Spectral features provided a better basis for tree species classification than structural features. Using single, first or all returns gave only a small difference in cross-validation correctness rate. The best classification model was created using multispectral distribution features of all returns, with an correctness rate of 77.09 %. Spruce and pine had a 100 % overall classification accuracy and were not confused with any other species. Linden was the deciduous species with a large sample that was most frequently confused with many other deciduous species. 2019-02-08 Second cycle, A2E NonPeerReviewed application/pdf sv https://stud.epsilon.slu.se/14193/11/Axelsson_A_180105.pdf Axelsson, Arvid, 2018. Using multispectral ALS for tree species identification. Second cycle, A2E. Umeå: (S) > Dept. of Forest Resource Management <https://stud.epsilon.slu.se/view/divisions/OID-260.html> urn:nbn:se:slu:epsilon-s-10194 eng
spellingShingle Forestry - General aspects
Forestry production
Axelsson, Arvid
Using multispectral ALS for tree species identification
title Using multispectral ALS for tree species identification
title_full Using multispectral ALS for tree species identification
title_fullStr Using multispectral ALS for tree species identification
title_full_unstemmed Using multispectral ALS for tree species identification
title_short Using multispectral ALS for tree species identification
title_sort using multispectral als for tree species identification
topic Forestry - General aspects
Forestry production
url https://stud.epsilon.slu.se/14193/
https://stud.epsilon.slu.se/14193/