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Robust Phase Retrieval with the Swept Approximate Message Passing (prSAMP) Algorithm

机译:扫频近似消息传递(prSAMP)算法进行稳健的相位检索

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In phase retrieval, the goal is to recover a complex signal from the magnitude of its linear measurements. While many well-known algorithms guarantee deterministic recovery of the unknown signal using i.i.d. random measurement matrices, they suffer serious convergence issues for some ill-conditioned measurement matrices. As an example, this happens in optical imagers using binary intensity-only spatial light modulators to shape the input wavefront. The problem of ill-conditioned measurement matrices has also been a topic of interest for compressed sensing researchers during the past decade. In this paper, using recent advances in generic compressed sensing, we propose a new phase retrieval algorithm that well-behaves for a large class of measurement matrices, including Gaussian and Bernoulli binary i.i.d. random matrices, using both sparse and dense input signals. This algorithm is also robust to the strong noise levels found in some imaging applications.
机译:在相位检索中,目标是从其线性测量的幅度中恢复复杂的信号。尽管许多众所周知的算法都可以保证使用i.i.d进行确定性的未知信号恢复。随机测量矩阵,对于某些病态的测量矩阵,它们会遇到严重的收敛问题。例如,这在使用仅二进制强度的空间光调制器来成形输入波前的光学成像仪中发生。在过去的十年中,病态的测量矩阵问题也成为压缩感测研究人员关注的话题。在本文中,利用通用压缩传感技术的最新进展,我们提出了一种新的相位检索算法,该算法对于包括Gaussian和Bernoulli二进制i.i.d.使用稀疏和密集输入信号的随机矩阵。该算法对于某些成像应用中的强噪声水平也很鲁棒。

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