高光谱成像
数学
匹配(统计)
匹配追踪
最小二乘函数近似
稀疏逼近
凸优化
正多边形
投影(关系代数)
贪婪算法
算法
相似性(几何)
数学优化
计算机科学
模式识别(心理学)
人工智能
图像(数学)
压缩传感
统计
估计员
几何学
作者
Ernie Esser,Yifei Lou,Jack Xin
摘要
Unmixing problems in many areas such as hyperspectral imaging and differential optical absorption spectroscopy (DOAS) often require finding sparse nonnegative linear combinations of dictionary elements that match observed data. We show how aspects of these problems, such as misalignment of DOAS references and uncertainty in hyperspectral endmembers, can be modeled by expanding the dictionary with grouped elements and imposing a structured sparsity assumption that the combinations within each group should be sparse or even 1-sparse. If the dictionary is highly coherent, it is difficult to obtain good solutions using convex or greedy methods, such as nonnegative least squares (NNLS) or orthogonal matching pursuit. We use penalties related to the Hoyer measure, which is the ratio of the $l_1$ and $l_2$ norms, as sparsity penalties to be added to the objective in NNLS-type models. For solving the resulting nonconvex models, we propose a scaled gradient projection algorithm that requires solving a sequence of strongly convex quadratic programs. We discuss its close connections to convex splitting methods and difference of convex programming. We also present promising numerical results for DOAS analysis and hyperspectral unmixing problems.
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