In phase-only compressive sensing (PO-CS), our goal is to recover low-complexity signals (e.g., sparse signals, low-rank matrices) from the phase of complex linear measurements. While perfect recovery of signal direction in PO-CS was observed quite early, the exact reconstruction guarantee for a fixed, real signal was recently done by Jacques and Feuillen [IEEE Trans. Inf. Theory, 67 (2021), pp. 4150-4161]. However, two questions remain open: the uniform recovery guarantee and exact recovery of complex signal. In this paper, we almost completely address these two open questions. We prove that, all complex sparse signals or low-rank matrices can be uniformly, exactly recovered from a near optimal number of complex Gaussian measurement phases. By recasting PO-CS as a linear compressive sensing problem, the exact recovery follows from restricted isometry property (RIP). Our approach to uniform recovery guarantee is based on covering arguments that involve a delicate control of the (original linear) measurements with overly small magnitude. To work with complex signal, a different sign-product embedding property and a careful rescaling of the sensing matrix are employed. In addition, we show an extension that the uniform recovery is stable under moderate bounded noise. We also propose to add Gaussian dither before capturing the phases to achieve full reconstruction with norm information. Experimental results are reported to corroborate and demonstrate our theoretical results.
翻译:在仅相位压缩感知(PO-CS)中,我们的目标是从复线性测量的相位中恢复低复杂度信号(例如稀疏信号、低秩矩阵)。虽然在PO-CS中对信号方向的完美恢复早已观察到,但对于固定实信号的确切重建保证是由Jacques和Feuillen最近完成的[IEEE Trans。Inf。Theory,67(2021),pp.4150-4161]。然而,仍有两个问题没有解决:均匀恢复保证和复杂信号的确切恢复。在本文中,我们几乎完全解决了这两个悬而未决的问题。我们证明了所有复稀疏信号或低秩矩阵都可以从近乎最优的复高斯度量相位中均匀、精确地恢复。通过将PO-CS重新定义为线性压缩感知问题,由受限等距性质(RIP)得出精确恢复结果。我们的均匀恢复保证方法基于覆盖论证,其中涉及对过小幅度的(原始线性)测量的细致控制。为了处理复杂信号,采用了不同的符号积嵌入属性和对感测矩阵的仔细重新缩放的方法。另外,我们展示了一个扩展,即均匀恢复在适度的有界噪声下是稳定的。我们还提议在捕捉相位之前添加高斯扰动以实现具有范数信息的全重构。报告了实验结果以证明和证明我们的理论结果。