Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery

Lianas (woody vines) play a key role in tropical forest dynamics because of their strong influence on tree growth, mortality and regeneration. Assessing liana infestation over large areas is critical to understand the factors that drive their spatial distribution and to monitor change over time. How...

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Main Authors: Chris J. Chandler, Geertje M. F. van der Heijden, Doreen S. Boyd, Giles M. Foody
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/14/2774
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spelling doaj-653ecfd618d245d88a78880520dcf19d2021-07-23T14:04:32ZengMDPI AGRemote Sensing2072-42922021-07-01132774277410.3390/rs13142774Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived ImageryChris J. Chandler0Geertje M. F. van der Heijden1Doreen S. Boyd2Giles M. Foody3School of Geography, University of Nottingham, University Park, Nottingham NG7 2RD, UKSchool of Geography, University of Nottingham, University Park, Nottingham NG7 2RD, UKSchool of Geography, University of Nottingham, University Park, Nottingham NG7 2RD, UKSchool of Geography, University of Nottingham, University Park, Nottingham NG7 2RD, UKLianas (woody vines) play a key role in tropical forest dynamics because of their strong influence on tree growth, mortality and regeneration. Assessing liana infestation over large areas is critical to understand the factors that drive their spatial distribution and to monitor change over time. However, it currently remains unclear whether satellite-based imagery can be used to detect liana infestation across closed-canopy forests and therefore if satellite-observed changes in liana infestation can be detected over time and in response to climatic conditions. Here, we aim to determine the efficacy of satellite-based remote sensing for the detection of spatial and temporal patterns of liana infestation across a primary and selectively logged aseasonal forest in Sabah, Borneo. We used predicted liana infestation derived from airborne hyperspectral data to train a neural network classification for prediction across four Sentinel-2 satellite-based images from 2016 to 2019. Our results showed that liana infestation was positively related to an increase in Greenness Index (GI), a simple metric relating to the amount of photosynthetically active green leaves. Furthermore, this relationship was observed in different forest types and during (2016), as well as after (2017–2019), an El Niño-induced drought. Using a neural network classification, we assessed liana infestation over time and showed an increase in the percentage of severely (>75%) liana infested pixels from 12.9% ± 0.63 (95% CI) in 2016 to 17.3% ± 2 in 2019. This implies that reports of increasing liana abundance may be more wide-spread than currently assumed. This is the first study to show that liana infestation can be accurately detected across closed-canopy tropical forests using satellite-based imagery. Furthermore, the detection of liana infestation during both dry and wet years and across forest types suggests this method should be broadly applicable across tropical forests. This work therefore advances our ability to explore the drivers responsible for patterns of liana infestation at multiple spatial and temporal scales and to quantify liana-induced impacts on carbon dynamics in tropical forests globally.https://www.mdpi.com/2072-4292/13/14/2774airborne hyperspectral and LiDARaseasonal forestGreenness Indexliana infestationSentinel-2 imagery
collection DOAJ
language English
format Article
sources DOAJ
author Chris J. Chandler
Geertje M. F. van der Heijden
Doreen S. Boyd
Giles M. Foody
spellingShingle Chris J. Chandler
Geertje M. F. van der Heijden
Doreen S. Boyd
Giles M. Foody
Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
Remote Sensing
airborne hyperspectral and LiDAR
aseasonal forest
Greenness Index
liana infestation
Sentinel-2 imagery
author_facet Chris J. Chandler
Geertje M. F. van der Heijden
Doreen S. Boyd
Giles M. Foody
author_sort Chris J. Chandler
title Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
title_short Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
title_full Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
title_fullStr Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
title_full_unstemmed Detection of Spatial and Temporal Patterns of Liana Infestation Using Satellite-Derived Imagery
title_sort detection of spatial and temporal patterns of liana infestation using satellite-derived imagery
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-07-01
description Lianas (woody vines) play a key role in tropical forest dynamics because of their strong influence on tree growth, mortality and regeneration. Assessing liana infestation over large areas is critical to understand the factors that drive their spatial distribution and to monitor change over time. However, it currently remains unclear whether satellite-based imagery can be used to detect liana infestation across closed-canopy forests and therefore if satellite-observed changes in liana infestation can be detected over time and in response to climatic conditions. Here, we aim to determine the efficacy of satellite-based remote sensing for the detection of spatial and temporal patterns of liana infestation across a primary and selectively logged aseasonal forest in Sabah, Borneo. We used predicted liana infestation derived from airborne hyperspectral data to train a neural network classification for prediction across four Sentinel-2 satellite-based images from 2016 to 2019. Our results showed that liana infestation was positively related to an increase in Greenness Index (GI), a simple metric relating to the amount of photosynthetically active green leaves. Furthermore, this relationship was observed in different forest types and during (2016), as well as after (2017–2019), an El Niño-induced drought. Using a neural network classification, we assessed liana infestation over time and showed an increase in the percentage of severely (>75%) liana infested pixels from 12.9% ± 0.63 (95% CI) in 2016 to 17.3% ± 2 in 2019. This implies that reports of increasing liana abundance may be more wide-spread than currently assumed. This is the first study to show that liana infestation can be accurately detected across closed-canopy tropical forests using satellite-based imagery. Furthermore, the detection of liana infestation during both dry and wet years and across forest types suggests this method should be broadly applicable across tropical forests. This work therefore advances our ability to explore the drivers responsible for patterns of liana infestation at multiple spatial and temporal scales and to quantify liana-induced impacts on carbon dynamics in tropical forests globally.
topic airborne hyperspectral and LiDAR
aseasonal forest
Greenness Index
liana infestation
Sentinel-2 imagery
url https://www.mdpi.com/2072-4292/13/14/2774
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