红外与毫米波学报, 2019, 38 (1): 115, 网络出版: 2019-03-19  

一种考虑光谱变异性的高光谱图像非线性解混算法

A nonlinear unmixing algorithm dealing with spectral variability for hyperspectral imagery
智通祥 1,2,3,*杨斌 1,2,3王斌 1,2,3
作者单位
1 复旦大学 电磁波信息科学教育部重点实验室, 上海 200433
2 北京师范大学 地表过程与资源生态国家重点实验室, 北京 100875
3 复旦大学 信息学院智慧网络与系统研究中心, 上海 200433
引用该论文

智通祥, 杨斌, 王斌. 一种考虑光谱变异性的高光谱图像非线性解混算法[J]. 红外与毫米波学报, 2019, 38(1): 115.

ZHI Tong-Xiang, YANG Bin, WANG Bin. A nonlinear unmixing algorithm dealing with spectral variability for hyperspectral imagery[J]. Journal of Infrared and Millimeter Waves, 2019, 38(1): 115.

参考文献

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智通祥, 杨斌, 王斌. 一种考虑光谱变异性的高光谱图像非线性解混算法[J]. 红外与毫米波学报, 2019, 38(1): 115. ZHI Tong-Xiang, YANG Bin, WANG Bin. A nonlinear unmixing algorithm dealing with spectral variability for hyperspectral imagery[J]. Journal of Infrared and Millimeter Waves, 2019, 38(1): 115.

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