具有线性变稀疏结构的MMV线性逆问题的解

Y. Zhang, Q. Wan, W.L. Yang
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引用次数: 0

摘要

本文考虑了对当前处理逆问题算法的一种推广。我们不再关注解向量的不变稀疏轮廓,而是主要关注线性变化稀疏结构的问题。提出了两种利用MMV求解未知线性变稀疏结构线性逆问题的方法。为了适应解的线性变化稀疏轮廓,一种方法LMMV (linear - mmv)引入新参数,利用圆移位矩阵将新问题转化为具有不变稀疏轮廓的问题,并在已有方法的基础上推导出新的迭代算法。另一种方法WMMV (Wide-MMV)将解向量稀疏结构的变化归因于所选字典的不准确性,并将字典的几行组合在一起,相当于找到一个更低维的稀疏解,从而使算法更加鲁棒。随机字典的数值实验和在到达方向估计中的应用验证了这两种方法的有效性,并说明了它们相对于一些现有方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solution to Linear Inverse Problem with MMV having Linearly Varying Sparsity Structure
In this paper, an extension to current algorithms dealing with inverse problem is considered. In stead of that invariant sparse profile of the solution vectors is concerned, we mainly focus on the problem with linearly varying sparse structures. Two methods are proposed to solve the linear inverse problem with the unknown linearly varying sparse structure by using MMV. In order to adapt to the linearly varying sparse profile of the solutions, one method, named LMMV (Linearly-MMV), introduces a new parameter and makes use of circular shift matrix to convert the new problem to the one with invariant sparse profile and new iterative algorithm is derived in principle of existing methods. Another method, named WMMV (Wide-MMV), attributes the change of the sparse structure of the solution vectors to the inaccuracy caused by the chosen dictionary and combines several rows of the dictionary together, which is equivalent to find a lower dimensional sparse solution and in turn gives a more robust algorithm. Numerical experiments with random dictionaries and applications to direction-of-arrival (DOA) estimation verify the validation of the proposed two methods and their superiority to some existing methods is illustrated.
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