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An Undersampled Phase Retrieval Algorithm via Gradient Iteration

机译:通过梯度迭代的强度相位检索算法

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This work addresses the issue of undersampled phase retrieval using the gradient framework and proximal regularization theorem. It is formulated as an optimization problem in terms of least absolute shrinkage and selection operator (LASSO) form with$(l_{2}+P_{1})$norms minimization in the case of sparse incident signals. Then, inspired by the compressive phase retrieval via majorization-minimization technique (C-PRIME) algorithm, a gradient-based PRIME algorithm is proposed to solve a quadratic approximation of the original problem. Moreover, we also proved that the C-PRIME method can be regarded as a special case of the proposed algorithm. As demonstrated by simulation results, both the magnitude and phase recovery abilities of the proposed algorithm are excellent. Furthermore, the experimental results also show the mean square error (MSE) performance of the proposed algorithm versus iterative step.
机译:这项工作解决了使用梯度框架和近端正则化定理来解决欠采样阶段检索的问题。在最小的绝对收缩和选择操作员(套索)形式方面,将其标志着作为优化问题 $(l_ {2} + p_ {1})$ 在稀疏事件信号的情况下规范最小化。然后,通过多大化最小化技术(C-Prime)算法的压缩相位检索灵感,提出了一种基于梯度的主要算法来解决原始问题的二次近似。此外,我们还证明了C-Prime方法可以被视为所提出算法的特殊情况。如模拟结果所示,所提出算法的幅度和相位回收能力都是优异的。此外,实验结果还显示了所提出的算法与迭代步骤的平均方误差(MSE)性能。

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