4.5 Article

A Geometric Analysis of Phase Retrieval

期刊

FOUNDATIONS OF COMPUTATIONAL MATHEMATICS
卷 18, 期 5, 页码 1131-1198

出版社

SPRINGER
DOI: 10.1007/s10208-017-9365-9

关键词

Phase retrieval; Nonconvex optimization; Function landscape; Second-order geometry; Ridable saddles; Trust-region method; Inverse problems; Mathematical imaging

资金

  1. Gordon and Betty Moore Foundation
  2. Alfred P. Sloan Foundation
  3. [ONR N00014-13-1-0492]
  4. [NSF CCF 1527809]
  5. [NSF IIS 1546411]

向作者/读者索取更多资源

Can we recover a complex signal from its Fourier magnitudes? More generally, given a set of m measurements, for , is it possible to recover (i.e., length-n complex vector)? This generalized phase retrieval (GPR) problem is a fundamental task in various disciplines and has been the subject of much recent investigation. Natural nonconvex heuristics often work remarkably well for GPR in practice, but lack clear theoretic explanations. In this paper, we take a step toward bridging this gap. We prove that when the measurement vectors 's are generic (i.i.d. complex Gaussian) and numerous enough (), with high probability, a natural least-squares formulation for GPR has the following benign geometric structure: (1) There are no spurious local minimizers, and all global minimizers are equal to the target signal , up to a global phase, and (2) the objective function has a negative directional curvature around each saddle point. This structure allows a number of iterative optimization methods to efficiently find a global minimizer, without special initialization. To corroborate the claim, we describe and analyze a second-order trust-region algorithm.

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