Kobayashi, Toshiyuki and Tateishi, Ryutaro and Alsaaideh, Bayan and Sharma, Ram C. and Wakaizumi, Takuma and Miyamoto, Daichi and Bai, Xiulian and Long, Bui D. and Gegentana, Gegentana and Maitiniyazi, Aikebaier and Cahyana, Destika and Haireti, Alifu and Morifuji, Yohei and Abake, Gulijianati and Pratama, Rendy and Zhang, Naijia and Alifu, Zilaitigu and Shirahata, Tomohiro and Mi, Lan and Iizuka, Kotaro and Yusupujiang, Aimaiti and Rinawan, Fedri R. and Bhattarai, Richa and Phong, Dong X. (2017) Production of Global Land Cover Data – GLCNMO2013. Journal of Geography and Geology, 9 (3). pp. 1-15. ISSN 1916-9779
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Abstract
Global land cover products have been created for global environmental studies by several institutions and organizations. The Global Mapping Project coordinated by the International Steering Committee for Global Mapping (ISCGM) has been periodically producing global land cover datasets asone of the eight basic global datasets. It has produced a new fifteen-second (approximately 500 m resolution at the equator) global land cover dataset – GLCNMO2013 (or GLCNMO version 3). This paper describes the method of producing GLCNMO2013. GLCNMO2013 has 20 land cover classes, and they were mapped by improved methods from GLCNMO version 2. In GLCNMO2013, five classes,which are urban, mangrove, wetland, snow/ice, and waterwere independently classified. The remaining 15 classes were divided into 4 groups and mapped individually by supervised classification. 2006 polygons of training data collected for GLCNMO2008 were used for supervised classification. In addition, about 3000 polygons of new training data were collected globally using Google Earth, MODIS Normalized Difference Vegetation Index (NDVI) seasonal change patterns, existing regional land cover maps, and existing four global land cover products. The primary data of this product were Moderate Resolution Imaging Spectroradiometer (MODIS) data of 2013. GLCNMO2013 was validated at 1006 sampled points. The overall accuracy of GLCNMO2013 was 74.8%, and the overall accuracy for eight aggregated classes was 90.2%. The accuracy of the GLCNMO2013 was not improved compared with the GLCNMO2008 at heterogeneous land covers. It is necessary to prepare the training data for mosaic classes and heterogeneous land covers for improving the accuracy.
Item Type: | Article |
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Subjects: | STM Repository > Geological Science |
Depositing User: | Managing Editor |
Date Deposited: | 09 Jun 2023 04:29 |
Last Modified: | 29 Feb 2024 04:18 |
URI: | http://classical.goforpromo.com/id/eprint/3423 |