Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery

This study focused on the detection of forest canopy openings resulting from harvesting activities in hill tropical forests. Canopy openings, whether natural or human-induced, can have detrimental effects on forest ecosystems. Traditional ground surveys to assess the extent of canopy opening can be...

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Published in:Southern Forests
Main Author: Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
Format: Article
Language:English
Published: National Inquiry Services Centre Ltd 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190244439&doi=10.2989%2f20702620.2023.2273478&partnerID=40&md5=c4f29f699b4cc8551198b0e6660f32bc
id 2-s2.0-85190244439
spelling 2-s2.0-85190244439
Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
2024
Southern Forests
86
1
10.2989/20702620.2023.2273478
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190244439&doi=10.2989%2f20702620.2023.2273478&partnerID=40&md5=c4f29f699b4cc8551198b0e6660f32bc
This study focused on the detection of forest canopy openings resulting from harvesting activities in hill tropical forests. Canopy openings, whether natural or human-induced, can have detrimental effects on forest ecosystems. Traditional ground surveys to assess the extent of canopy opening can be challenging and time-consuming. Therefore the study aimed to utilise satellite imagery, specifically PlanetScope data, to detect, map and measure canopy openings in logged-over forests. Three different classification algorithms, namely maximum likelihood classifier (MLC), support vector machine (SVM) and object-based image analysis (OBIA) were used and compared to identify canopy opening areas. The assessment was conducted in two stages: a preliminary assessment with three classes (forest, canopy opening and shadow) and a final assessment with two classes (forest and canopy opening). The overall accuracies of the classification algorithms were 82% for MLC, 91% for SVM and 90% for OBIA. Both SVM and OBIA surpassed the accuracy threshold, with SVM being the most effective in detecting and extracting canopy openings in dense forests. Results demonstrated the potential of PlanetSope imagery and advanced classification algorithms to detect canopy openings in logged-over forests. The findings highlighted the importance of regular updates on canopy opening extent, particularly concerning sustainable forest assessment and minimising the negative impacts on forest ecosystems. © 2024 NISC (Pty) Ltd.
National Inquiry Services Centre Ltd
20702620
English
Article

author Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
spellingShingle Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
author_facet Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
author_sort Mawlidan N.; Ismail M.H.; Gandaseca S.; Rahmawaty; Yaakub N.F.
title Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
title_short Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
title_full Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
title_fullStr Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
title_full_unstemmed Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
title_sort Detecting canopy openings in logged-over forests: a multi-classifier analysis of PlanetScope imagery
publishDate 2024
container_title Southern Forests
container_volume 86
container_issue 1
doi_str_mv 10.2989/20702620.2023.2273478
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190244439&doi=10.2989%2f20702620.2023.2273478&partnerID=40&md5=c4f29f699b4cc8551198b0e6660f32bc
description This study focused on the detection of forest canopy openings resulting from harvesting activities in hill tropical forests. Canopy openings, whether natural or human-induced, can have detrimental effects on forest ecosystems. Traditional ground surveys to assess the extent of canopy opening can be challenging and time-consuming. Therefore the study aimed to utilise satellite imagery, specifically PlanetScope data, to detect, map and measure canopy openings in logged-over forests. Three different classification algorithms, namely maximum likelihood classifier (MLC), support vector machine (SVM) and object-based image analysis (OBIA) were used and compared to identify canopy opening areas. The assessment was conducted in two stages: a preliminary assessment with three classes (forest, canopy opening and shadow) and a final assessment with two classes (forest and canopy opening). The overall accuracies of the classification algorithms were 82% for MLC, 91% for SVM and 90% for OBIA. Both SVM and OBIA surpassed the accuracy threshold, with SVM being the most effective in detecting and extracting canopy openings in dense forests. Results demonstrated the potential of PlanetSope imagery and advanced classification algorithms to detect canopy openings in logged-over forests. The findings highlighted the importance of regular updates on canopy opening extent, particularly concerning sustainable forest assessment and minimising the negative impacts on forest ecosystems. © 2024 NISC (Pty) Ltd.
publisher National Inquiry Services Centre Ltd
issn 20702620
language English
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