Karya
Judul/Title Local-scale accuracy assessment of vegetation cover change maps derived from Global Forest Change data, ClasLite, and supervised classifications: case study at part of Riau Province, Indonesia
Penulis/Author Dr.Sc. Sanjiwana Arjasakusuma, S.Si., M.GIS. (1) ; Prof. Muhammad Kamal, S.Si., M.GIS., Ph.D. (2); MUHAMMAD HAFIZT (3); HERNANDEA FRIEDA F (4)
Tanggal/Date 31 2018
Kata Kunci/Keyword
Abstrak/Abstract Massive deforestation in Indonesia drives the need for proper monitoring using appropriate technology and method. The continuing mission of Landsat sensor extends the observation to almost 30 years back, initiating the ability to monitor the dynamics of vegetation intensively. By taking the advantage of the Landsat archive, advanced semi-automatic classification method, namely ClasLite developed by Asner et al. (J Appl Remote Sens 3:33543–33543, 2009) and a new end-product of 30 m Global Forest Cover Change cover (GFC) datasets developed by (Hansen et al. in Science 342:850–853, 2013a), offered the ability to easily monitor deforestation and forest degradation with little or few knowledge of mapping. This study aims to assess the performance of these newly available products of GFC and the ClasLite method against the traditional pixel-based supervised classification of minimum distance to mean (MD), maximum likelihood (ML), spectral angle mapper (SAM), and random forest (RF). Visual image interpretation of pan-sharpened Landsat was carried out to measure the accuracy of each final map. Result demonstrated that GFC and CLaslite performance has 3 to 18% higher overall accuracy for mapping vegetation cover change compared with the conventional supervised analysis using MD, ML, SAM, and RF with ClasLite as the most accurate method with 78.14 ± 2%. Further adjustment of the cover change map of GFC by using forest extent from ClasLite was able to increase the accuracy of the original GFC data by 10%. Therefore, GFC and ClasLite ensure the ability to monitor vegetation cover change accurately in a simple manner.
Rumpun Ilmu Penginderaan Jauh
Bahasa Asli/Original Language English
Level Internasional
Status
Dokumen Karya
No Judul Tipe Dokumen Aksi
1Arjasakusuma 2018_agjm_bukti korespondensi.pdf[PAK] Bukti Korespondensi Penulis
2Applied Geomatics_editorial boards.pdf[PAK] Halaman Editorial
3Applied Geomatics_Volume 10, issue 3_cover & daftar isi.pdf[PAK] Halaman Cover
4Applied Geomatics_Volume 10, issue 3_cover & daftar isi.pdf[PAK] Daftar Isi
5Arjasakusuma 2018 Local scale accuracy assessment of vegetation cover change maps_published-min.pdf[PAK] Full Dokumen
6Arjasakusuma 2018 Local-scale accuracy assessment of vegetation_Cek Similarity-min.pdf[PAK] Cek Similarity