The global landscape of phase retrieval I: perturbed amplitude models

12/15/2021
by   Jian-Feng Cai, et al.
0

A fundamental task in phase retrieval is to recover an unknown signal ∈ from a set of magnitude-only measurements y_i=_i,, i=1,…,m. In this paper, we propose two novel perturbed amplitude models (PAMs) which have non-convex and quadratic-type loss function. When the measurements _i ∈ are Gaussian random vectors and the number of measurements m≥ Cn, we rigorously prove that the PAMs admit no spurious local minimizers with high probability, i.e., the target solution is the unique global minimizer (up to a global phase) and the loss function has a negative directional curvature around each saddle point. Thanks to the well-tamed benign geometric landscape, one can employ the vanilla gradient descent method to locate the global minimizer (up to a global phase) without spectral initialization. We carry out extensive numerical experiments to show that the gradient descent algorithm with random initialization outperforms state-of-the-art algorithms with spectral initialization in empirical success rate and convergence speed.

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