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Reconstruction of Signals From Their Autocorrelation and Cross-Correlation Vectors, With Applications to Phase Retrieval and Blind Channel Estimation

机译:从其自相关和互相关向量重构信号,并将其应用于相位检索和盲信道估计

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摘要

We consider the problem of reconstructing two signals from the autocorrelation and cross-correlation measurements. This inverse problem is a fundamental one in signal processing, and arises in many applications, including phase retrieval and blind channel estimation. In a typical phase retrieval setup, only the autocorrelation measurements are obtainable. We show that, when the measurements are obtained using three simple "masks", phase retrieval reduces to the aforementioned reconstruction problem. The classic solution to this problem is based on finding common factors between the z-transforms of the autocorrelation and cross-correlation vectors. This solution has enjoyed limited practical success, mainly due to the fact that it is not sufficiently stable in the noisy setting. In this paper, inspired by the success of convex programming in provably and stably solving various quadratic constrained problems, we develop a semidefinite programming-based algorithm and provide theoretical guarantees. In particular, we show that almost all signals can be uniquely recovered by this algorithm (up to a global phase). Comparative numerical studies demonstrate that the proposed method significantly outperforms the classic method in the noisy setting.
机译:我们考虑从自相关和互相关测量中重建两个信号的问题。这个逆问题是信号处理中的一个基本问题,并且在许多应用中都出现,包括相位检索和盲信道估计。在典型的相位检索设置中,只能获得自相关测量。我们表明,当使用三个简单的“蒙版”获得测量值时,相位检索可简化为上述重建问题。解决此问题的经典解决方案是基于找到自相关向量和互相关向量的z变换之间的共同因素。该解决方案在实践中获得了有限的成功,主要是由于它在嘈杂的环境中不够稳定。本文在凸编程成功地证明并稳定地解决各种二次约束问题的启发下,开发了一种基于半定规划的算法,并提供了理论上的保证。特别是,我们证明了该算法几乎可以恢复所有信号(直到全局阶段)。比较数值研究表明,在嘈杂的环境中,该方法明显优于经典方法。

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