Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli

Recent developments in high resolution remote sensing have created a wide array of potential new mangrove applications. In this study the concept of Pleiades is applied to mapping and exposes the current system developments and spatial industry needs to delineate individual tree canopy. By exploring...

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Main Author: Rosli, Sharul Nizam
Format: Thesis
Language:English
Published: 2020
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/31247/
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author Rosli, Sharul Nizam
author_facet Rosli, Sharul Nizam
author_sort Rosli, Sharul Nizam
building UiTM Institutional Repository
collection Online Access
description Recent developments in high resolution remote sensing have created a wide array of potential new mangrove applications. In this study the concept of Pleiades is applied to mapping and exposes the current system developments and spatial industry needs to delineate individual tree canopy. By exploring developments in a Pleiades technology and investigating the use of the technology in mapping, a lot of advantages for spatial industry have been explored. Along advancements in technology, there were various methods have been developed to delineate individual tree canopy. The Pleiades image which is 0.63 m resolution was used. The study area was covered in mangrove are at Bagan Datuk, Perak. The major research strategy used in this project, are detecting, classify, and analyze the classification on mangrove family. Segmentation and classification approach were developed for this delineation canopy in the study area. Method that being used are Support Vector Machine (SVM) and K-Nearest Neighborhood (K-NN) that being apply in Object Based Image Analysis (OBIA). The information was used to identify individual tree canopies and delineated their boundaries. The results of segmentation and classification were used to know which classifier have the highest accuracy assessment in the study area that correspond with the result images obtained. This research show that SVM has the highest accuracy with 63.8156% overall accuracy and 0.5513 kappa coefficient better than K-NN that has 59.8303% overall accuracy and 0.5018 kappa coefficient.
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institution Universiti Teknologi MARA
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spelling uitm-312472020-06-16T04:19:22Z https://ir.uitm.edu.my/id/eprint/31247/ Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli Rosli, Sharul Nizam Remote Sensing Recent developments in high resolution remote sensing have created a wide array of potential new mangrove applications. In this study the concept of Pleiades is applied to mapping and exposes the current system developments and spatial industry needs to delineate individual tree canopy. By exploring developments in a Pleiades technology and investigating the use of the technology in mapping, a lot of advantages for spatial industry have been explored. Along advancements in technology, there were various methods have been developed to delineate individual tree canopy. The Pleiades image which is 0.63 m resolution was used. The study area was covered in mangrove are at Bagan Datuk, Perak. The major research strategy used in this project, are detecting, classify, and analyze the classification on mangrove family. Segmentation and classification approach were developed for this delineation canopy in the study area. Method that being used are Support Vector Machine (SVM) and K-Nearest Neighborhood (K-NN) that being apply in Object Based Image Analysis (OBIA). The information was used to identify individual tree canopies and delineated their boundaries. The results of segmentation and classification were used to know which classifier have the highest accuracy assessment in the study area that correspond with the result images obtained. This research show that SVM has the highest accuracy with 63.8156% overall accuracy and 0.5513 kappa coefficient better than K-NN that has 59.8303% overall accuracy and 0.5018 kappa coefficient. 2020-06-16 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/31247/1/TD_SHARUL%20NIZAM%20ROSLI%20AP%20R%2019_5.pdf Rosli, Sharul Nizam (2020) Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli. (2020) Degree thesis, thesis, Universiti Teknologi Mara Perlis.
spellingShingle Remote Sensing
Rosli, Sharul Nizam
Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title_full Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title_fullStr Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title_full_unstemmed Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title_short Assessment of pleiades satellite image for mangrove forest classification / Sharul Nizam Rosli
title_sort assessment of pleiades satellite image for mangrove forest classification / sharul nizam rosli
topic Remote Sensing
url https://ir.uitm.edu.my/id/eprint/31247/