English

Spectral Method for Phase Retrieval: an Expectation Propagation Perspective

Information Theory 2020-09-10 v2 math.IT

Abstract

Phase retrieval refers to the problem of recovering a signal xCn\mathbf{x}_{\star}\in\mathbb{C}^n from its phaseless measurements yi=aiHxy_i=|\mathbf{a}_i^{\mathrm{H}}\mathbf{x}_{\star}|, where {ai}i=1m\{\mathbf{a}_i\}_{i=1}^m are the measurement vectors. Many popular phase retrieval algorithms are based on the following two-step procedure: (i) initialize the algorithm based on a spectral method, (ii) refine the initial estimate by a local search algorithm (e.g., gradient descent). The quality of the spectral initialization step can have a major impact on the performance of the overall algorithm. In this paper, we focus on the model where the measurement matrix A=[a1,,am]H\mathbf{A}=[\mathbf{a}_1,\ldots,\mathbf{a}_m]^{\mathrm{H}} has orthonormal columns, and study the spectral initialization under the asymptotic setting m,nm,n\to\infty with m/nδ(1,)m/n\to\delta\in(1,\infty). We use the expectation propagation framework to characterize the performance of spectral initialization for Haar distributed matrices. Our numerical results confirm that the predictions of the EP method are accurate for not-only Haar distributed matrices, but also for realistic Fourier based models (e.g. the coded diffraction model). The main findings of this paper are the following: (1) There exists a threshold on δ\delta (denoted as δweak\delta_{\mathrm{weak}}) below which the spectral method cannot produce a meaningful estimate. We show that δweak=2\delta_{\mathrm{weak}}=2 for the column-orthonormal model. In contrast, previous results by Mondelli and Montanari show that δweak=1\delta_{\mathrm{weak}}=1 for the i.i.d. Gaussian model. (2) The optimal design for the spectral method coincides with that for the i.i.d. Gaussian model, where the latter was recently introduced by Luo, Alghamdi and Lu.

Keywords

Cite

@article{arxiv.1903.02505,
  title  = {Spectral Method for Phase Retrieval: an Expectation Propagation Perspective},
  author = {Junjie Ma and Rishabh Dudeja and Ji Xu and Arian Maleki and Xiaodong Wang},
  journal= {arXiv preprint arXiv:1903.02505},
  year   = {2020}
}

Comments

Accepted by IEEE Transactions on Information Theory

R2 v1 2026-06-23T08:00:09.485Z