Detecting shrub encroachment in seminatural grasslands using UAS LiDAR

Abstract Shrub encroachment in seminatural grasslands threatens local biodiversity unless management is applied to reduce shrub density. Dense vegetation of Cytisus scoparius homogenizes the landscape negatively affecting local plant diversity. Detecting structural change (e.g., biomass) is essentia...

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Main Authors: Bjarke Madsen, Urs A. Treier, András Zlinszky, Arko Lucieer, Signe Normand
Format: Article
Language:English
Published: Wiley 2020-06-01
Series:Ecology and Evolution
Subjects:
Online Access:https://doi.org/10.1002/ece3.6240
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spelling doaj-8a74fa7f72a442c5a58ed2b3ad47ca032021-04-02T17:04:10ZengWileyEcology and Evolution2045-77582020-06-0110114876490210.1002/ece3.6240Detecting shrub encroachment in seminatural grasslands using UAS LiDARBjarke Madsen0Urs A. Treier1András Zlinszky2Arko Lucieer3Signe Normand4Section for Ecoinformatics & Biodiversity Center for Biodiversity Dynamics in a Changing World Department of Biology Aarhus University Aarhus C DenmarkSection for Ecoinformatics & Biodiversity Center for Biodiversity Dynamics in a Changing World Department of Biology Aarhus University Aarhus C DenmarkSection for Ecoinformatics & Biodiversity Center for Biodiversity Dynamics in a Changing World Department of Biology Aarhus University Aarhus C DenmarkDiscipline of Geography and Spatial Sciences University of Tasmania Hobart AustraliaSection for Ecoinformatics & Biodiversity Center for Biodiversity Dynamics in a Changing World Department of Biology Aarhus University Aarhus C DenmarkAbstract Shrub encroachment in seminatural grasslands threatens local biodiversity unless management is applied to reduce shrub density. Dense vegetation of Cytisus scoparius homogenizes the landscape negatively affecting local plant diversity. Detecting structural change (e.g., biomass) is essential for assessing negative impacts of encroachment. Hence, exploring new monitoring tools to achieve this task is important for effectively capturing change and evaluating management activities. This study combines traditional field‐based measurements with novel Light Detection and Ranging (LiDAR) observations from an Unmanned Aircraft System (UAS). We investigate the accuracy of mapping C. scoparius in three dimensions (3D) and of structural change metrics (i.e., biomass) derived from ultrahigh‐density point cloud data (>1,000 pts/m2). Presence–absence of 12 shrub or tree genera was recorded across a 6.7 ha seminatural grassland area in Denmark. Furthermore, 10 individuals of C. scoparius were harvested for biomass measurements. With a UAS LiDAR system, we collected ultrahigh‐density spatial data across the area in October 2017 (leaf‐on) and April 2018 (leaf‐off). We utilized a 3D point‐based classification to distinguish shrub genera based on their structural appearance (i.e., density, light penetration, and surface roughness). From the identified C. scoparius individuals, we related different volume metrics (mean, max, and range) to measured biomass and quantified spatial variation in biomass change from 2017 to 2018. We obtained overall classification accuracies above 86% from point clouds of both seasons. Maximum volume explained 77.4% of the variation in biomass. The spatial patterns revealed landscape‐scale variation in biomass change between autumn 2017 and spring 2018, with a notable decrease in some areas. Further studies are needed to disentangle the causes of the observed decrease, for example, recent winter grazing and/or frost events. Synthesis and applications: We present a workflow for processing ultrahigh‐density spatial data obtained from a UAS LiDAR system to detect change in C. scoparius. We demonstrate that UAS LiDAR is a promising tool to map and monitor grassland shrub dynamics at the landscape scale with the accuracy needed for effective nature management. It is a new tool for standardized and nonbiased evaluation of management activities initiated to prevent shrub encroachment.https://doi.org/10.1002/ece3.6240biomassgrassland dynamicsremote sensingscotch broomshrub encroachmentUAS LiDAR
collection DOAJ
language English
format Article
sources DOAJ
author Bjarke Madsen
Urs A. Treier
András Zlinszky
Arko Lucieer
Signe Normand
spellingShingle Bjarke Madsen
Urs A. Treier
András Zlinszky
Arko Lucieer
Signe Normand
Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
Ecology and Evolution
biomass
grassland dynamics
remote sensing
scotch broom
shrub encroachment
UAS LiDAR
author_facet Bjarke Madsen
Urs A. Treier
András Zlinszky
Arko Lucieer
Signe Normand
author_sort Bjarke Madsen
title Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
title_short Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
title_full Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
title_fullStr Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
title_full_unstemmed Detecting shrub encroachment in seminatural grasslands using UAS LiDAR
title_sort detecting shrub encroachment in seminatural grasslands using uas lidar
publisher Wiley
series Ecology and Evolution
issn 2045-7758
publishDate 2020-06-01
description Abstract Shrub encroachment in seminatural grasslands threatens local biodiversity unless management is applied to reduce shrub density. Dense vegetation of Cytisus scoparius homogenizes the landscape negatively affecting local plant diversity. Detecting structural change (e.g., biomass) is essential for assessing negative impacts of encroachment. Hence, exploring new monitoring tools to achieve this task is important for effectively capturing change and evaluating management activities. This study combines traditional field‐based measurements with novel Light Detection and Ranging (LiDAR) observations from an Unmanned Aircraft System (UAS). We investigate the accuracy of mapping C. scoparius in three dimensions (3D) and of structural change metrics (i.e., biomass) derived from ultrahigh‐density point cloud data (>1,000 pts/m2). Presence–absence of 12 shrub or tree genera was recorded across a 6.7 ha seminatural grassland area in Denmark. Furthermore, 10 individuals of C. scoparius were harvested for biomass measurements. With a UAS LiDAR system, we collected ultrahigh‐density spatial data across the area in October 2017 (leaf‐on) and April 2018 (leaf‐off). We utilized a 3D point‐based classification to distinguish shrub genera based on their structural appearance (i.e., density, light penetration, and surface roughness). From the identified C. scoparius individuals, we related different volume metrics (mean, max, and range) to measured biomass and quantified spatial variation in biomass change from 2017 to 2018. We obtained overall classification accuracies above 86% from point clouds of both seasons. Maximum volume explained 77.4% of the variation in biomass. The spatial patterns revealed landscape‐scale variation in biomass change between autumn 2017 and spring 2018, with a notable decrease in some areas. Further studies are needed to disentangle the causes of the observed decrease, for example, recent winter grazing and/or frost events. Synthesis and applications: We present a workflow for processing ultrahigh‐density spatial data obtained from a UAS LiDAR system to detect change in C. scoparius. We demonstrate that UAS LiDAR is a promising tool to map and monitor grassland shrub dynamics at the landscape scale with the accuracy needed for effective nature management. It is a new tool for standardized and nonbiased evaluation of management activities initiated to prevent shrub encroachment.
topic biomass
grassland dynamics
remote sensing
scotch broom
shrub encroachment
UAS LiDAR
url https://doi.org/10.1002/ece3.6240
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