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Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas

The use of high-resolution imagery (HRI) has the potential to improve the accuracy of kelp biomass estimates, ensuring the implementation of sustainable harvesting. However, definitive research on the potential of HRI in this application is lacking in the current literature. An accurate estimation o...

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Main Author: Searle, Lauren Jane
Other Authors: Bolton, John
Format: Thesis
Language:English
Published: Department of Biological Sciences 2025
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access_status_str Open Access
author Searle, Lauren Jane
author2 Bolton, John
author_browse Bolton, John
Searle, Lauren Jane
author_facet Bolton, John
Searle, Lauren Jane
author_sort Searle, Lauren Jane
collection Thesis
description The use of high-resolution imagery (HRI) has the potential to improve the accuracy of kelp biomass estimates, ensuring the implementation of sustainable harvesting. However, definitive research on the potential of HRI in this application is lacking in the current literature. An accurate estimation of kelp biomass is crucial to calculate maximum sustainable yield (MSY) in South African kelp Concessions. This study seeks to fill the knowledge gap by exploring the effectiveness of HRI for estimating the biomass of kelp along a specific stretch of coastline. The study aim is achieved by analysing HRI of Concession Area 6 taken from an aircraft. Maps quantifying kelp extent are derived from image classification methods applied to the HRI. A total biomass figure is then determined using the product of the calculated kelp extent and an average biomass figure of 14.5 kg/m-2 , taken from the literature. A total biomass of 40527.9 tonnes wet weight was calculated for Concession Area 6. The classification of HRI provided an overall accuracy of 95%, which is relatively high when compared to Sentinel-2 satellite imagery which resulted in an overall accuracy of 75%. When compared to the kelp extent measured in previous studies, HRI-derived maps had consistently less kelp coverage than maps from other imagery, suggesting that other imagery overestimates kelp extent (likely due to resolution). However, this was confounded given different imagery used at different times and so it was not possible to rule out change in kelp coverage over time. The results demonstrate the value of HRI in the mapping of kelp extent, which can ultimately be used to produce more accurate MSY assessments and support sustainable harvesting practices. However, before HRI can be integrated into MSY assessments, it is imperative to calculate more accurate biomass figures that are specific to the Concession Area, rather than relying on region wide estimates. Additionally, it's important to acknowledge that while HRI excels in precision, other imagery may be more suitable for large-scale estimates where accuracy is not a primary concern and due to its cost-effectiveness.
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institution University of Cape Town (South Africa)
language eng
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2025
publishDateRange 2025
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spelling oai:open.uct.ac.za:11427/41310 Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas Searle, Lauren Jane Bolton, John Rothman, Mark Bray, Kate High-resolution imagery Ecklonia maxima GIS kelp mapping The use of high-resolution imagery (HRI) has the potential to improve the accuracy of kelp biomass estimates, ensuring the implementation of sustainable harvesting. However, definitive research on the potential of HRI in this application is lacking in the current literature. An accurate estimation of kelp biomass is crucial to calculate maximum sustainable yield (MSY) in South African kelp Concessions. This study seeks to fill the knowledge gap by exploring the effectiveness of HRI for estimating the biomass of kelp along a specific stretch of coastline. The study aim is achieved by analysing HRI of Concession Area 6 taken from an aircraft. Maps quantifying kelp extent are derived from image classification methods applied to the HRI. A total biomass figure is then determined using the product of the calculated kelp extent and an average biomass figure of 14.5 kg/m-2 , taken from the literature. A total biomass of 40527.9 tonnes wet weight was calculated for Concession Area 6. The classification of HRI provided an overall accuracy of 95%, which is relatively high when compared to Sentinel-2 satellite imagery which resulted in an overall accuracy of 75%. When compared to the kelp extent measured in previous studies, HRI-derived maps had consistently less kelp coverage than maps from other imagery, suggesting that other imagery overestimates kelp extent (likely due to resolution). However, this was confounded given different imagery used at different times and so it was not possible to rule out change in kelp coverage over time. The results demonstrate the value of HRI in the mapping of kelp extent, which can ultimately be used to produce more accurate MSY assessments and support sustainable harvesting practices. However, before HRI can be integrated into MSY assessments, it is imperative to calculate more accurate biomass figures that are specific to the Concession Area, rather than relying on region wide estimates. Additionally, it's important to acknowledge that while HRI excels in precision, other imagery may be more suitable for large-scale estimates where accuracy is not a primary concern and due to its cost-effectiveness. 2025-04-01T07:53:26Z 2025-04-01T07:53:26Z 2024 2025-04-01T07:17:13Z Thesis / Dissertation Masters MSc http://hdl.handle.net/11427/41310 eng application/pdf Department of Biological Sciences Faculty of Science University of Cape Town
spellingShingle High-resolution imagery
Ecklonia maxima
GIS
kelp mapping
Searle, Lauren Jane
Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
thesis_degree_str Master's
title Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
title_full Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
title_fullStr Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
title_full_unstemmed Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
title_short Unlocking the potential of remote sensing for kelp biomass estimation in South African Kelp Concession Areas
title_sort unlocking the potential of remote sensing for kelp biomass estimation in south african kelp concession areas
topic High-resolution imagery
Ecklonia maxima
GIS
kelp mapping
url http://hdl.handle.net/11427/41310
work_keys_str_mv AT searlelaurenjane unlockingthepotentialofremotesensingforkelpbiomassestimationinsouthafricankelpconcessionareas