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Spectral-spatial joint sparsity unmixing of hyperspectral data using overcomplete dictionaries

机译:使用超完备字典对高光谱数据进行光谱空间联合稀疏性分解

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Sparse spectral unmixing can be modeled as a linear combination of endmembers contained in an overcomplete dictionary weighted by the corresponding sparse abundance vector. This method exploits the fact that there is only a small number of endmembers inside a pixel compared to the overcomplete endmember spectral dictionary. Since the information contained in hyperspectral pixels is often spatially correlated, in this work we propose to jointly estimate the sparse abundance vectors of neighboring hyperspectral pixels within a local window exploiting joint sparsity with common and noncommon endmembers. To demonstrate the efficiency of our framework, we perform experiments using both simulated and real hyperspectral data.
机译:稀疏频谱解混可以建模为包含在由相应稀疏丰度向量加权的超完备字典中的末端成员的线性组合。这种方法利用了这样一个事实,即像素内的末端成员数量与不完整的末端成员谱字典相比要少得多。由于高光谱像素中包含的信息通常在空间上相关,因此在这项工作中,我们建议共同评估局部窗口中相邻高光谱像素的稀疏丰度矢量,从而利用与公共端和非公共端成员的联合稀疏性。为了证明我们框架的效率,我们使用模拟和真实的高光谱数据进行实验。

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