Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid

There are currently 153 species of Shorea listed in the International Union for Conservation of Nature and Natural Resources (IUCN) Red list 2013 where Shorea leprocula (Meranti tembaga), Shorea pauciflora king (Meranti nemesu) and Shorea resinosa (Meranti belang) that are found in the Ampang Forest...

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Main Author: Khalid, Nafisah
Format: Thesis
Language:English
Published: 2017
Subjects:
Online Access:http://ir.uitm.edu.my/id/eprint/21666/
http://ir.uitm.edu.my/id/eprint/21666/1/TP_NAFISAH%20KHALID%20AP%2017_5.pdf
id uitm-21666
recordtype eprints
spelling uitm-216662018-09-25T08:45:04Z http://ir.uitm.edu.my/id/eprint/21666/ Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid Khalid, Nafisah Environmental conditions. Environmental quality. Environmental indicators Remote sensing There are currently 153 species of Shorea listed in the International Union for Conservation of Nature and Natural Resources (IUCN) Red list 2013 where Shorea leprocula (Meranti tembaga), Shorea pauciflora king (Meranti nemesu) and Shorea resinosa (Meranti belang) that are found in the Ampang Forest Reserve are listed as endangered species. Due to the current list, mapping and monitoring the forest inventories of this species is necessary to provide the regular report for Reducing Emissions from Deforestation and Degradation (REDD) program especially concerning the accurate estimation of total aboveground biomass in calculating the carbon stock. However, uncertainties in tropical forest remain high because it is costly and laborious to measure the tree variables accurately in relation to quantify the aboveground biomass. Thus, recent remote sensing technology that allows for accurate operational and managerial inventories in a cost effective and timely manner is constantly in demand. In this study, the pan-sharpening Worldview-2 imagery is used to extract the tree crown parameters using object-based image analysis. Three image segmentation methods have examined which are image filtering, combination of image filtering with inverse watershed and multi-resolution with local extrema image segmentation. The segmentation result is classified using rule-based image classification method. The results showed that multi-resolution with local extrema produces the most accurate result with 100% of success rate in detecting and delineating the tree crown. The overall classification accuracy using is good with 86.11%. In addition, the results from synergism of WorldView-2 imagery and LiDAR data showed that the RMSEz for tree height was 2.763m and above the tolerance. The finding from the proposed allometric models using tree parameters measured from field showed that the coefficient of determination (R²) ranging from 0.905 to 0.980, indicating strong correlation amongst the examined variables. Finally, the total aboveground biomass (TAGB) estimated for entire training and test area was found to approximately 3000 tonnes for each site. The proposed allometric models for Shorea and mixed tree species were proved to be applicable for this study area and fulfil the research objectives. The study has demonstrated that high resolution remote sensing datasets in the likes of Worldview-2 and LiDAR are viable substitution in complementing and increasing the efficiency of remote sensing technology for forest application. 2017 Thesis NonPeerReviewed text en http://ir.uitm.edu.my/id/eprint/21666/1/TP_NAFISAH%20KHALID%20AP%2017_5.pdf Khalid, Nafisah (2017) Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid. PhD thesis, Universiti Teknologi MARA.
repository_type Digital Repository
institution_category Local University
institution Universiti Teknologi MARA
building UiTM Institutional Repository
collection Online Access
language English
topic Environmental conditions. Environmental quality. Environmental indicators
Remote sensing
spellingShingle Environmental conditions. Environmental quality. Environmental indicators
Remote sensing
Khalid, Nafisah
Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
description There are currently 153 species of Shorea listed in the International Union for Conservation of Nature and Natural Resources (IUCN) Red list 2013 where Shorea leprocula (Meranti tembaga), Shorea pauciflora king (Meranti nemesu) and Shorea resinosa (Meranti belang) that are found in the Ampang Forest Reserve are listed as endangered species. Due to the current list, mapping and monitoring the forest inventories of this species is necessary to provide the regular report for Reducing Emissions from Deforestation and Degradation (REDD) program especially concerning the accurate estimation of total aboveground biomass in calculating the carbon stock. However, uncertainties in tropical forest remain high because it is costly and laborious to measure the tree variables accurately in relation to quantify the aboveground biomass. Thus, recent remote sensing technology that allows for accurate operational and managerial inventories in a cost effective and timely manner is constantly in demand. In this study, the pan-sharpening Worldview-2 imagery is used to extract the tree crown parameters using object-based image analysis. Three image segmentation methods have examined which are image filtering, combination of image filtering with inverse watershed and multi-resolution with local extrema image segmentation. The segmentation result is classified using rule-based image classification method. The results showed that multi-resolution with local extrema produces the most accurate result with 100% of success rate in detecting and delineating the tree crown. The overall classification accuracy using is good with 86.11%. In addition, the results from synergism of WorldView-2 imagery and LiDAR data showed that the RMSEz for tree height was 2.763m and above the tolerance. The finding from the proposed allometric models using tree parameters measured from field showed that the coefficient of determination (R²) ranging from 0.905 to 0.980, indicating strong correlation amongst the examined variables. Finally, the total aboveground biomass (TAGB) estimated for entire training and test area was found to approximately 3000 tonnes for each site. The proposed allometric models for Shorea and mixed tree species were proved to be applicable for this study area and fulfil the research objectives. The study has demonstrated that high resolution remote sensing datasets in the likes of Worldview-2 and LiDAR are viable substitution in complementing and increasing the efficiency of remote sensing technology for forest application.
format Thesis
author Khalid, Nafisah
author_facet Khalid, Nafisah
author_sort Khalid, Nafisah
title Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
title_short Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
title_full Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
title_fullStr Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
title_full_unstemmed Development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / Nafisah Khalid
title_sort development of allometric model for mixed and shorea tree species through synergistic analysis of remote sensing data / nafisah khalid
publishDate 2017
url http://ir.uitm.edu.my/id/eprint/21666/
http://ir.uitm.edu.my/id/eprint/21666/1/TP_NAFISAH%20KHALID%20AP%2017_5.pdf
first_indexed 2023-09-18T23:07:04Z
last_indexed 2023-09-18T23:07:04Z
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