Classification and change detection of Sabah mangrove forest using decision-tree learning technique

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_version_ 1860799664418193408
building INTELEK Repository
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collectionurl https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072
date 2018-09-05 14:58:20
eventvenue Kuala Lumpur, Malaysia
format Restricted Document
id 6906
institution UniSZA
originalfilename 1635-01-FH03-FBIM-18-15027.jpg
person norman
recordtype oai_dc
resourceurl https://intelek.unisza.edu.my/intelek/pages/view.php?ref=6906
spelling 6906 https://intelek.unisza.edu.my/intelek/pages/view.php?ref=6906 https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072 Restricted Document Conference Conference Paper image/jpeg inches 96 96 norman 1426 79 79 2018-09-05 14:58:20 754 1426x754 1635-01-FH03-FBIM-18-15027.jpg UniSZA Private Access Classification and change detection of Sabah mangrove forest using decision-tree learning technique The objective of this study is to determine the potential of decision tree-learning technique to classify and detects the changes of the Sabah mangrove forest area. The study area was conducted in the Mengkabong mangrove forest which is located on the west coast of Sabah. The multi-temporal of Landsat series (TM, ETM+, and OLI-TIRS) with five years interval data from 1990 and 2013 were used in this study. The results show that the use of decision-tree learning technique integrated with multi-temporal Landsat series and GIS data can be effective in delineating spatial and temporal change of the Sabah mangrove forest. The selection of suitable attributes from spectral features of Landsat data, topographic data and GIS database has promoted the high accuracy of the mangrove classification result with 90.8%. 40 hectares of Mengkabong mangrove were reduced from 1990 to 2013 and the fragmentation was obvious. In conclusion, the decision-tree learning technique was successfully classified and detects the changes of mangrove forest in the Mengkabong area. 9th IGRSM International Conference and Exhibition on Geospatial and Remote Sensing: Geospatial Enablement Kuala Lumpur, Malaysia
spellingShingle Classification and change detection of Sabah mangrove forest using decision-tree learning technique
summary The objective of this study is to determine the potential of decision tree-learning technique to classify and detects the changes of the Sabah mangrove forest area. The study area was conducted in the Mengkabong mangrove forest which is located on the west coast of Sabah. The multi-temporal of Landsat series (TM, ETM+, and OLI-TIRS) with five years interval data from 1990 and 2013 were used in this study. The results show that the use of decision-tree learning technique integrated with multi-temporal Landsat series and GIS data can be effective in delineating spatial and temporal change of the Sabah mangrove forest. The selection of suitable attributes from spectral features of Landsat data, topographic data and GIS database has promoted the high accuracy of the mangrove classification result with 90.8%. 40 hectares of Mengkabong mangrove were reduced from 1990 to 2013 and the fragmentation was obvious. In conclusion, the decision-tree learning technique was successfully classified and detects the changes of mangrove forest in the Mengkabong area.
title Classification and change detection of Sabah mangrove forest using decision-tree learning technique
title_full Classification and change detection of Sabah mangrove forest using decision-tree learning technique
title_fullStr Classification and change detection of Sabah mangrove forest using decision-tree learning technique
title_full_unstemmed Classification and change detection of Sabah mangrove forest using decision-tree learning technique
title_short Classification and change detection of Sabah mangrove forest using decision-tree learning technique
title_sort classification and change detection of sabah mangrove forest using decision-tree learning technique