欠定系统的部分线性循环测量数值解

Jean-Luc Bouchot, Lei Cao
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引用次数: 0

摘要

我们考虑从欠采样数据中恢复稀疏解的传统压缩感知问题。我们对由部分循环矩阵产生的测量特别感兴趣。这是由通常通过卷积实现的实际物理设置所驱动的。我们推导了一个新的优化问题,它源于传统的约束条件下的最小化问题,并增加了矩阵是通过从循环矩阵中选择行来获取的信息。有了这些额外的知识,就有可能模拟优化作用的完整矩阵和完整测量向量。此外,由于循环矩阵研究得很好,众所周知,使用傅里叶变换可以实现快速计算。本文描述了这种新算法的动机、公式和初步结果,结果显示出良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical solution of underdetermined systems from partial linear circulant measurements
We consider the traditional compressed sensing problem of recovering a sparse solution from undersampled data. We are in particular interested in the case where the measurements arise from a partial circulant matrix. This is motivated by practical physical setups that are usually implemented through convolutions. We derive a new optimization problem that stems from the traditional ℓ1 minimization under constraints, with the added information that the matrix is taken by selecting rows from a circulant matrix. With this added knowledge it is possible to simulate the full matrix and full measurement vector on which the optimization acts. Moreover, as circulant matrices are well-studied it is known that using Fourier transform allows for fast computations. This paper describes the motivations, formulations, and preliminary results of this novel algorithm, which shows promising results.
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