Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data

To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spatial distribution of tree species is indispensable. Remote sensing can provide powerful tools for mapping species, but this task is complex in areas with high plant diversity and multi-layered canopie...

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Published in:International Journal of Remote Sensing
Main Authors: Yadav, BKV, Lucieer, A, Baker, SC, Jordan, GJ
Format: Article in Journal/Newspaper
Language:unknown
Published: Taylor & Francis Ltd 2021
Subjects:
Online Access:https://eprints.utas.edu.au/38776/
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spelling ftunivtasmania:oai:eprints.utas.edu.au:38776 2023-05-15T13:42:39+02:00 Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data Yadav, BKV Lucieer, A Baker, SC Jordan, GJ 2021 https://eprints.utas.edu.au/38776/ unknown Taylor & Francis Ltd Yadav, BKV, Lucieer, A orcid:0000-0002-9468-4516 , Baker, SC orcid:0000-0002-7593-0267 and Jordan, GJ orcid:0000-0002-6033-2766 2021 , 'Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data' , International Journal of Remote Sensing, vol. 42, no. 20 , 7952–7977 , doi:10.1080/01431161.2021.1956699 <http://dx.doi.org/10.1080/01431161.2021.1956699>. remote sensing lidar hyperspectral tree forest segmentation classification species Article PeerReviewed 2021 ftunivtasmania https://doi.org/10.1080/01431161.2021.1956699 2021-12-06T23:17:53Z To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spatial distribution of tree species is indispensable. Remote sensing can provide powerful tools for mapping species, but this task is complex in areas with high plant diversity and multi-layered canopies. This paper addresses the issue of classifying wet eucalypt forest plants by examining tree crown segmentation and species classification using different combinations of remote sensing datasets against mapped tree locations. This study explores optimal segmentation parameters for tree crown delineation compared to manually digitized tree crowns. The best segmentation accuracy of 88.71%, resulted from segmenting a combined Minimum Noise Fraction (MNF) dataset derived from hyperspectral imagery (HSI) and a LiDAR-derived Canopy Height Model (CHM). Object-based classification of tree species was performed using a random forest classifier. The fused dataset of MNF and CHM produced the highest overall accuracy of 78.26% for four vegetation classes, while the fused HSI, indices, and CHM performed best (66.67%) with five vegetation classes. However, both approaches had a high overall performance. The CHM contributed to tree crown segmentation and species classification accuracy, and fused datasets were more robust to spatially discriminate wet eucalypt forest species compared to a single dataset. Eucalyptus obliqua was classified with the highest accuracy of 90.86% for four classes using the fused MNF and CHM dataset, and 86.11% for five classes using the fused HSI, indices, and CHM dataset. An important understorey species – the tree fern (Dicksonia antarctica) – was classified with the highest accuracy of 83.54% for four classes using HSI. Therefore, fusing hyperspectral and LiDAR data could classify both the overstorey and dominant understorey species, and thus play a crucial role in identifying forest biological diversity. This approach will be useful for forest managers and ecologists to plan sustainable management of eucalypt forest biodiversity and produce maps for monitoring species of interest. Article in Journal/Newspaper Antarc* Antarctica University of Tasmania: UTas ePrints International Journal of Remote Sensing 42 20 7952 7977
institution Open Polar
collection University of Tasmania: UTas ePrints
op_collection_id ftunivtasmania
language unknown
topic remote sensing
lidar
hyperspectral
tree
forest
segmentation
classification
species
spellingShingle remote sensing
lidar
hyperspectral
tree
forest
segmentation
classification
species
Yadav, BKV
Lucieer, A
Baker, SC
Jordan, GJ
Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
topic_facet remote sensing
lidar
hyperspectral
tree
forest
segmentation
classification
species
description To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spatial distribution of tree species is indispensable. Remote sensing can provide powerful tools for mapping species, but this task is complex in areas with high plant diversity and multi-layered canopies. This paper addresses the issue of classifying wet eucalypt forest plants by examining tree crown segmentation and species classification using different combinations of remote sensing datasets against mapped tree locations. This study explores optimal segmentation parameters for tree crown delineation compared to manually digitized tree crowns. The best segmentation accuracy of 88.71%, resulted from segmenting a combined Minimum Noise Fraction (MNF) dataset derived from hyperspectral imagery (HSI) and a LiDAR-derived Canopy Height Model (CHM). Object-based classification of tree species was performed using a random forest classifier. The fused dataset of MNF and CHM produced the highest overall accuracy of 78.26% for four vegetation classes, while the fused HSI, indices, and CHM performed best (66.67%) with five vegetation classes. However, both approaches had a high overall performance. The CHM contributed to tree crown segmentation and species classification accuracy, and fused datasets were more robust to spatially discriminate wet eucalypt forest species compared to a single dataset. Eucalyptus obliqua was classified with the highest accuracy of 90.86% for four classes using the fused MNF and CHM dataset, and 86.11% for five classes using the fused HSI, indices, and CHM dataset. An important understorey species – the tree fern (Dicksonia antarctica) – was classified with the highest accuracy of 83.54% for four classes using HSI. Therefore, fusing hyperspectral and LiDAR data could classify both the overstorey and dominant understorey species, and thus play a crucial role in identifying forest biological diversity. This approach will be useful for forest managers and ecologists to plan sustainable management of eucalypt forest biodiversity and produce maps for monitoring species of interest.
format Article in Journal/Newspaper
author Yadav, BKV
Lucieer, A
Baker, SC
Jordan, GJ
author_facet Yadav, BKV
Lucieer, A
Baker, SC
Jordan, GJ
author_sort Yadav, BKV
title Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
title_short Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
title_full Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
title_fullStr Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
title_full_unstemmed Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
title_sort tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and lidar data
publisher Taylor & Francis Ltd
publishDate 2021
url https://eprints.utas.edu.au/38776/
genre Antarc*
Antarctica
genre_facet Antarc*
Antarctica
op_relation Yadav, BKV, Lucieer, A orcid:0000-0002-9468-4516 , Baker, SC orcid:0000-0002-7593-0267 and Jordan, GJ orcid:0000-0002-6033-2766 2021 , 'Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data' , International Journal of Remote Sensing, vol. 42, no. 20 , 7952–7977 , doi:10.1080/01431161.2021.1956699 <http://dx.doi.org/10.1080/01431161.2021.1956699>.
op_doi https://doi.org/10.1080/01431161.2021.1956699
container_title International Journal of Remote Sensing
container_volume 42
container_issue 20
container_start_page 7952
op_container_end_page 7977
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