竹子
遥感
分布(数学)
森林资源清查
中国
统计的
林业
环境科学
计算机科学
地理
数学
统计
森林经营
生态学
生物
数学分析
考古
作者
Huaqiang Du,Fangjie Mao,Xuejian Li,Guomo Zhou,Xiaojun Xu,Ning Han,Shaobo Sun,Guolong Gao,Lu Cui,Yangguang Li,Di’en Zhu,Yuli Liu,Liang Chen,Weiliang Fan,Pingheng Li,Yongjun Shi,Yufeng Zhou
标识
DOI:10.1109/jstars.2018.2800127
摘要
Bamboo forest has great potential in climate change mitigation. However, the spatiotemporal pattern of carbon storage of global bamboo forest is still cannot be accurately estimated, because the lack of an accurate global bamboo forest distribution information. In this paper, the global bamboo forest distribution was mapped with the following steps. To begin with, training samples were obtained based on investigation data, statistic data, and literature data. Then, a decision tree was constructed for mapping the global bamboo forest distribution by integrating Landsat 8 OLI and MODIS data. Finally, the global bamboo forest area was estimated using a pixel unmixing algorithm. The constructed decision tree succeeds in extracting global bamboo forest based on remote sensing data, where the overall accuracy of classification was 78.81%. The estimated total global bamboo forest area was 30538.35 × 10 3 ha, with a low root-mean-square error of 611.1 × 10 3 ha. The estimated bamboo forest area of each province in China and each country were high consistent with the National Forest Inventory in China and Food and Agriculture Organization of the United Nations statistic results (average R 2 > 0.9), respectively. Therefore, the global bamboo forest map yielded a satisfactory accuracy in both classification and area estimation, and could provide accurate and significant support for global bamboo forest resource management and carbon cycle research.
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