Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques

Rapid urbanization and the risk of climatic variations, including a rise in temperature and increased rainfall, have urged research in the development of methods and techniques to monitor the modification of land use/land cover (LULC). This study employed the normalized differencing vegetative ind...

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Main Authors: Syeda Maria, Zaidi, Akbari, Abolghasem, Azizan, Abu Samah, Ngien, S. K., Gisen, J. I. A.
Format: Article
Language:English
Published: Pjoes 2017
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/19825/1/Pol.J.Environ.Stud.Vol.26.No.6.2833-2840.pdf
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author Syeda Maria, Zaidi
Akbari, Abolghasem
Azizan, Abu Samah
Ngien, S. K.
Gisen, J. I. A.
author_facet Syeda Maria, Zaidi
Akbari, Abolghasem
Azizan, Abu Samah
Ngien, S. K.
Gisen, J. I. A.
author_sort Syeda Maria, Zaidi
collection UMP
description Rapid urbanization and the risk of climatic variations, including a rise in temperature and increased rainfall, have urged research in the development of methods and techniques to monitor the modification of land use/land cover (LULC). This study employed the normalized differencing vegetative index (NDVI) and semi-supervised image classification (SSIC) integrated with high-resolution Google Earth images of the Kuantan River Basin (KRB) in Malaysia. The Landsat-5 (TM) images for the years 1993, 1999, and 2010 were selected. The results from both classifications provided a consistent accuracy of assessment with a reasonable level of agreement. However, SSIC was found to be more precise than NDVI. Overall accuracy was 82% for 1993 and 1999, and 80% for 2010, with the kappa values ranging from 0.789 to 0.761. Meanwhile, NDVI accuracy was attained at 64% with kappa value at 0.527 for 1999. In addition, 70% and 72% accuracy were obtained for 1993 and 2010 with estimated kappa values of 0.651 and 0.672, respectively. The study is anticipated to assist decision makers for better emergency response and sustainable land development action plans, thus mitigating the challenges of rapid urban growth
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spelling UMPir198252018-01-15T03:40:23Z http://umpir.ump.edu.my/id/eprint/19825/ Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques Syeda Maria, Zaidi Akbari, Abolghasem Azizan, Abu Samah Ngien, S. K. Gisen, J. I. A. TA Engineering (General). Civil engineering (General) Rapid urbanization and the risk of climatic variations, including a rise in temperature and increased rainfall, have urged research in the development of methods and techniques to monitor the modification of land use/land cover (LULC). This study employed the normalized differencing vegetative index (NDVI) and semi-supervised image classification (SSIC) integrated with high-resolution Google Earth images of the Kuantan River Basin (KRB) in Malaysia. The Landsat-5 (TM) images for the years 1993, 1999, and 2010 were selected. The results from both classifications provided a consistent accuracy of assessment with a reasonable level of agreement. However, SSIC was found to be more precise than NDVI. Overall accuracy was 82% for 1993 and 1999, and 80% for 2010, with the kappa values ranging from 0.789 to 0.761. Meanwhile, NDVI accuracy was attained at 64% with kappa value at 0.527 for 1999. In addition, 70% and 72% accuracy were obtained for 1993 and 2010 with estimated kappa values of 0.651 and 0.672, respectively. The study is anticipated to assist decision makers for better emergency response and sustainable land development action plans, thus mitigating the challenges of rapid urban growth Pjoes 2017-10-30 Article PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/19825/1/Pol.J.Environ.Stud.Vol.26.No.6.2833-2840.pdf Syeda Maria, Zaidi and Akbari, Abolghasem and Azizan, Abu Samah and Ngien, S. K. and Gisen, J. I. A. (2017) Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques. Polish Journal of Environmental Studies, 26 (6). pp. 2833-2840. ISSN 1230-1485. (Published) http://www.pjoes.com/pdf/26.6/Pol.J.Environ.Stud.Vol.26.No.6.2833-2840.pdf 10.15244/pjoes/68878
spellingShingle TA Engineering (General). Civil engineering (General)
Syeda Maria, Zaidi
Akbari, Abolghasem
Azizan, Abu Samah
Ngien, S. K.
Gisen, J. I. A.
Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title_full Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title_fullStr Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title_full_unstemmed Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title_short Landsat-5 Time Series Analysis for Land Use/Land Cover Change Detection Using NDVI and Semi-Supervised Classification Techniques
title_sort landsat 5 time series analysis for land use land cover change detection using ndvi and semi supervised classification techniques
topic TA Engineering (General). Civil engineering (General)
url http://umpir.ump.edu.my/id/eprint/19825/1/Pol.J.Environ.Stud.Vol.26.No.6.2833-2840.pdf
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