PhaseSense — Signal Reconstruction from Phase-Only Measurements via Quadratic Programming

Vinith Kishore, Subhadip Mukherjee, C. Seelamantula
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引用次数: 3

Abstract

We consider the problem of reconstructing a complex-valued signal from its phase-only measurements. This framework can be considered as a generalization of the well-known one-bit compressed sensing paradigm where the underlying signal is known to be sparse. In contrast, the proposed formalism does not rely on the assumption of sparsity and hence applies to a broader class of signals. The optimization problem for signal reconstruction is formulated by first splitting the linear measurement vector into its phase and magnitude components and subsequently using the non-negativity property of the magnitude component as a constraint. The resulting optimization problem turns out to be a quadratic program (QP) and is solved using two algorithms: (i) alternating directions method of multipliers; and (ii) projected gradient-descent with Nesterov’s momentum. Due to the inherent scale ambiguity of the phase-only measurement, the underlying signal can be reconstructed only up to a global scale-factor. We obtain high accuracy for reconstructing 1–D synthetic signals in the absence of noise. We also show an application of the proposed approach in reconstructing images from the phase of their measurement coefficients. The underlying image is recovered up to a peak signal-to-noise ratio exceeding 30 dB in several examples, indicating an accurate reconstruction.
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相位感知-信号重建从相位测量通过二次规划
我们考虑了从相位测量中重建复值信号的问题。该框架可以被认为是众所周知的一位压缩感知范式的推广,其中底层信号已知是稀疏的。相反,所提出的形式主义不依赖于稀疏性假设,因此适用于更广泛的信号类别。首先将线性测量向量分解为相位分量和幅度分量,然后利用幅度分量的非负性作为约束,从而制定了信号重构的优化问题。所得到的优化问题是一个二次规划(QP),并使用两种算法求解:(i)乘法器交替方向法;(ii)利用Nesterov动量预测梯度下降。由于纯相位测量固有的尺度模糊性,底层信号只能重构到一个全局尺度因子。我们获得了在无噪声情况下重建一维合成信号的高精度。我们还展示了该方法在从测量系数的相位重建图像中的应用。在几个例子中,底层图像恢复到峰值信噪比超过30 dB,表明重建准确。
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