遥感技术与应用 2021, Vol. 36 Issue (5): 1178-1188 DOI: 10.11873/j.issn.1004-0323.2021.5.1178 |
遥感应用 |
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基于地物光谱季节曲线特征的毛竹林分布提取 |
魏雪馨1,2(),刘洋1(),闵庆文1,刘荣高1,张清洋3,叶晓星4,刘蓓蓓5 |
1.中国科学院地理科学与资源研究所,北京 100101 2.中国科学院大学,北京 100049 3.庆元县食用菌科研中心,浙江 庆元 323800 4.庆元县食用菌管理局,浙江 庆元 323800 5.应急管理部国家减灾中心,北京 100124 |
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Extraction of Moso Bamboo Forest Distribution based on Characteristics of Vegetation Spectral Seasonal Curves |
Xuexin Wei1,2(),Yang Liu1(),Qingwen Min1,Ronggao Liu1,Qingyang Zhang3,Xiaoxing Ye4,Beibei Liu5 |
1.Institute of Geographic Sciences and Natural Resources Research,Beijing 100101,China 2.University of Chinese Academy of Sciences,Beijing 100049,China 3.Qingyuan Edible Fungi Research Center,Qingyuan 323800,China 4.Qingyuan County Edible Fungi Administration,Qingyuan 323800,China 5.National Disaster Reduction Center of China,Beijing 100124,China |
引用本文:
魏雪馨,刘洋,闵庆文,刘荣高,张清洋,叶晓星,刘蓓蓓. 基于地物光谱季节曲线特征的毛竹林分布提取[J]. 遥感技术与应用, 2021, 36(5): 1178-1188.
Xuexin Wei,Yang Liu,Qingwen Min,Ronggao Liu,Qingyang Zhang,Xiaoxing Ye,Beibei Liu. Extraction of Moso Bamboo Forest Distribution based on Characteristics of Vegetation Spectral Seasonal Curves. Remote Sensing Technology and Application, 2021, 36(5): 1178-1188.
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