Mapping of secondary forest age in China using stacked generalization and Landsat time series

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作者
Shaoyu Zhang
Hanzeyu Xu
Aixia Liu
Shuhua Qi
Bisong Hu
Min Huang
Jin Luo
机构
[1] Jiangxi Normal University,Key Laboratory of Poyang Lake Wetland and Watershed Research (Ministry of Education), School of Geography and Environment
[2] Nanjing Normal University,School of Geography
[3] Ministry of Natural Resources,Land Satellite Remote Sensing Application Center
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A national distribution of secondary forest age (SFA) is essential for understanding the forest ecosystem and carbon stock in China. While past studies have mainly used various change detection algorithms to detect forest disturbance, which cannot adequately characterize the entire forest landscape. This study developed a data-driven approach for improving performances of the Vegetation Change Tracker (VCT) and Continuous Change Detection and Classification (CCDC) algorithms for detecting the establishment of forest stands. An ensemble method for mapping national-scale SFA by determining the establishment time of secondary forest stands using change detection algorithms and dense Landsat time series was proposed. A dataset of national secondary forest age for China (SFAC) for 1 to 34 and with a 30-m spatial resolution was produced from the optimal ensemble model. This dataset provides national, continuous spatial SFA information and can improve understanding of secondary forests and the estimation of forest carbon storage in China.
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