期刊文献+

Analysis of forest cover change at Khadimnagar National Park, Sylhet,Bangladesh, using Landsat TM and GIS data 被引量:1

Analysis of forest cover change at Khadimnagar National Park, Sylhet, Bangladesh, using Landsat TM and GIS data
下载PDF
导出
摘要 We mapped the forest cover of Khadimnagar National Park (KNP) of Sylhet Forest Division and estimated forest change over a period of 22 years (1988-2010) using Landsat TM images and other GIS data. Supervised classification and Normalized Difference Vegetation Index (NDVI) image classification approaches were applied to the images to produce three cover classes, viz. dense forest, medium dense forest, and bare land. The change map was produced by differencing classified imageries of 1988 and 2010 as before image and after image, respectively, in ERDAS IMAGINE. Error matrix and kappa statistics were used to assess the accuracy of the produced maps. Overall map accuracies resulting from supervised classification of 1988 and 2010 imageries were 84.6% (Kappa 0.75) and 87.5% (Kappa 0.80), respec- tively. Forest cover statistics resulting from supervised classification showed that dense forest and bare land declined from 526 ha (67%) to 417 ha (59%) and 105 ha (13%) to 8 ha (1%), respectively, whereas medium dense forest increased from 155 ha (20%) to 317 ha (40%). Forest cover change statistics derived from NDVI classification showed that dense forest declined from 525 ha (67%) to 421 ha (54%) while medium dense forest increased from 253 ha (32%) to 356 ha (45%). Both supervised and NDVI classification approaches showed similar trends of forest change, i.e. decrease of dense forest and increase of medium dense forest, which indicates dense forest has been converted to medium dense forest. Area of bare land was unchanged. Illicit felling, encroachment, and settlement near forests caused the dense forest decline while short and long rotation plantations raised in various years caused the increase in area of medium dense forest. Protective measures should be undertaken to check further degradation of forest at KNP. We mapped the forest cover of Khadimnagar National Park (KNP) of Sylhet Forest Division and estimated forest change over a period of 22 years (1988-2010) using Landsat TM images and other GIS data. Supervised classification and Normalized Difference Vegetation Index (NDVI) image classification approaches were applied to the images to produce three cover classes, viz. dense forest, medium dense forest, and bare land. The change map was produced by differencing classified imageries of 1988 and 2010 as before image and after image, respectively, in ERDAS IMAGINE. Error matrix and kappa statistics were used to assess the accuracy of the produced maps. Overall map accuracies resulting from supervised classification of 1988 and 2010 imageries were 84.6% (Kappa 0.75) and 87.5% (Kappa 0.80), respec- tively. Forest cover statistics resulting from supervised classification showed that dense forest and bare land declined from 526 ha (67%) to 417 ha (59%) and 105 ha (13%) to 8 ha (1%), respectively, whereas medium dense forest increased from 155 ha (20%) to 317 ha (40%). Forest cover change statistics derived from NDVI classification showed that dense forest declined from 525 ha (67%) to 421 ha (54%) while medium dense forest increased from 253 ha (32%) to 356 ha (45%). Both supervised and NDVI classification approaches showed similar trends of forest change, i.e. decrease of dense forest and increase of medium dense forest, which indicates dense forest has been converted to medium dense forest. Area of bare land was unchanged. Illicit felling, encroachment, and settlement near forests caused the dense forest decline while short and long rotation plantations raised in various years caused the increase in area of medium dense forest. Protective measures should be undertaken to check further degradation of forest at KNP.
出处 《Journal of Forestry Research》 SCIE CAS CSCD 2014年第2期393-400,共8页 林业研究(英文版)
关键词 forest cover Landsat TM supervised classification NDVI change statistics error matrix forest cover, Landsat TM, supervised classification, NDVI,change statistics, error matrix
  • 相关文献

参考文献32

  • 1Achard F, Eva HD, Stibig HJ, Mayaux P, Gallego J, Richards T, Malingreau J. 2002. Determination of deforestation rates of the world’s humid tropical forests. Science, 297(5583): 999–1002.
  • 2Asian Development Bank (ADB). 2002. Country Assistance Plans — Bangladesh: III. Sector Strategies. Available at: http://www.abd.org. [Last access on 23 November 2010].
  • 3Bangladesh Bureau of Statistics (BBS). 2005. Compendium of environment statistics of Bangladesh. Ministry of Planning, Government of the People’s Republic of Bangladesh, pp 226–227.
  • 4Bentum EK. 2009. Detection of land use and land cover change in the Accra Metropolitan Area (Ghana) from 1990 to 2000. M.sc. thesis, Royal institute of technology, Sweden.
  • 5Browder JO, Wynne RH, Pedlowski MA. 2005. Agroforestry diffusion and secondary forest regeneration in the Brazilian Amazone: further findings from the Rondonia Agroforestry Pilot Project (1992–2002). Agroforestry System, 65: 99–111.
  • 6Congalton RG, Green K. 1999. Assessing the Accuracy of Remotely Sensed Data: Principles and Practices, Map Sciences Series. Florida: Lewis Publishers, Boca Raton, p.137.
  • 7Deng JS, Wang K, Deng YH. 2008. A PCA base land use change detection and analysis using multitemporal and multispetial satellite data. Remote Sensing of Environment, 30: 1054–1060.
  • 8Dewan AM, Yamaguchi Y. 2008. Using remote sensing and GIS to detect and monitor land use and land cover change in Dhaka Metropolitan of Bangladesh during 1990–2005. Environmental Monitoring and Assessment, 25(9): 23–24.
  • 9Eva H, Carboni S, Achard F, Stach N, Durieux L, Faure JF, Mollicon D. 2009. Monitoring forest areas from continental to terrestrial levels using a sample of medium spatial resolution satellite imagery. ISPRS Journal of Photogrammetry and Remote Sensing, 10(1016): 1–7.
  • 10FAO (Food and Agriculture Organization of the United Nations). 2006. Global Forest Resources Assessment 2005. Rome, Italy. ISBN 92-5-105481-9.

同被引文献3

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部