Ambiguity-Free and Efficient Sparse Phase Retrieval from Affine Measurements Under Outlier Corruption

Ming-Hsun Yang, Yao-Win Peter Hong, Jwo-Yuh Wu
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Abstract

Conventional sparse phase retrieval schemes can recover sparse signals from the magnitude of linear measurements but only up to a global phase ambiguity. This work proposes a novel approach to achieve ambiguity-free signal reconstruction using the magnitude of affine measurements, where an additional bias term is used as reference for phase recovery. The proposed scheme consists of two stages, i.e., a support identification stage followed by a signal recovery stage in which the nonzero signal entries are resolved. In the noise-free case, perfect support identification is guaranteed using a simple counting rule subject to a mild condition on the signal sparsity, and the exact recovery of the nonzero signal entries can be obtained in closed-form. The proposed scheme is then extended to the sparse noise (or outliers) scenario. Perfect support identification is still ensured in this case under mild conditions on the support size of the sparse outliers. With perfect support estimation, exact signal recovery from noisy measurements can be achieved using a simple majority rule. Computer simulations using both synthetic and real-world data sets are provided to demonstrate the effectiveness of the proposed scheme.
离群点损坏下仿射测量的无歧义高效稀疏相位恢复
传统的稀疏相位恢复方案可以从线性测量的幅度恢复稀疏信号,但只能达到全局相位模糊。这项工作提出了一种利用仿射测量的幅度来实现无歧义信号重建的新方法,其中额外的偏置项被用作相位恢复的参考。该方案包括两个阶段,即支持识别阶段,然后是信号恢复阶段,其中非零信号条目被解析。在无噪声情况下,采用简单的计数规则,在信号稀疏性较弱的条件下,保证了支持度的完美识别,并能以封闭形式精确恢复非零信号项。然后将所提出的方案扩展到稀疏噪声(或异常值)场景。在这种情况下,在稀疏离群点的支持大小较温和的条件下,仍然可以保证完美的支持识别。有了完美的支持估计,从噪声测量中精确的信号恢复可以使用一个简单的多数原则。利用合成数据集和真实数据集的计算机模拟证明了所提出方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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