Abstract
Abstract. Malaysia is the third largest country in the world that had lost forest cover. Therefore, timely information on forest cover is required to help the government to ensure that the remaining forest resources are managed in a sustainable manner. This study aims to map and detect changes of forest cover (deforestation and disturbance) in Iskandar Malaysia region in the south of Peninsular Malaysia between years 1990 and 2010 using Landsat satellite images. The Carnegie Landsat Analysis System-Lite (CLASlite) programme was used to classify forest cover using Landsat images. This software is able to mask out clouds, cloud shadows, terrain shadows, and water bodies and atmospherically correct the images using 6S radiative transfer model. An Automated Monte Carlo Unmixing technique embedded in CLASlite was used to unmix each Landsat pixel into fractions of photosynthetic vegetation (PV), non photosynthetic vegetation (NPV) and soil surface (S). Forest and non-forest areas were produced from the fractional cover images using appropriate threshold values of PV, NPV and S. CLASlite software was found to be able to classify forest cover in Iskandar Malaysia with only a difference between 14% (1990) and 5% (2010) compared to the forest land use map produced by the Department of Agriculture, Malaysia. Nevertheless, the CLASlite automated software used in this study was found not to exclude other vegetation types especially rubber and oil palm that has similar reflectance to forest. Currently rubber and oil palm were discriminated from forest manually using land use maps. Therefore, CLASlite algorithm needs further adjustment to exclude these vegetation and classify only forest cover.
Highlights
Approximately 19.54 million ha (59%) of Malaysia’s land mass was still covered by tropical rainforest in 2003 (Wan Razali and Mohd Shahwahid, 2013) the forest cover loss rate in Malaysia is high with 210,100 ha per year between 2000 and 2010 (Hansen et al, 2013)
In Iskandar Malaysia (IM) the forest cover was found to decrease 49.4% (22,165 ha) from 1990 (43,971 ha) to 2010 (21,806 ha). We validated these numbers with the forest land cover data provided by Department of Agriculture (DOA) and land cover obtained by classifying Landsat images using Maximum Likelihood Classification techniques (Kanniah et al, 2015)
CLASlite was found to slightly overestimate forest cover in IM by 21% in 1990 and 12% in 2010 when compared to forest land cover data provided by DOA
Summary
Approximately 19.54 million ha (59%) of Malaysia’s land mass was still covered by tropical rainforest in 2003 (Wan Razali and Mohd Shahwahid, 2013) the forest cover loss rate in Malaysia is high with 210,100 ha per year between 2000 and 2010 (Hansen et al, 2013). Malaysia was categorized among high forest cover loss countries as it was ranked at 129th place out of 137 countries by the global Environmental Performance Index (EPI, 2016). The Malaysian tropical forest contains various species of animals and plants that share their habitat. Changes or decrease in forest cover will destroy flora and fauna and will affect the delivery of important ecosystem services i.e regulating the climate, providing shelter to fauna (habitat), supporting cultural services etc. Remote sensing has high potential in gathering data on forest cover changes across large areas (Allnutt, 2013)
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Topics from this Paper
Nonphotosynthetic Vegetation
Landsat Images
Forest Cover
6S Radiative Transfer Model
Iskandar Malaysia Region
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