The global landscape of phase retrieval II: quotient intensity models

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

A fundamental problem in phase retrieval is to reconstruct an unknown signal from a set of magnitude-only measurements. In this work we introduce three novel quotient intensity-based models (QIMs) based a deep modification of the traditional intensity-based models. A remarkable feature of the new loss functions is that the corresponding geometric landscape is benign under the optimal sampling complexity. When the measurements a_i∈ are Gaussian random vectors and the number of measurements m≥ Cn, the QIMs admit no spurious local minimizers with high probability, i.e., the target solution x is the unique global minimizer (up to a global phase) and the loss function has a negative directional curvature around each saddle point. Such benign geometric landscape allows the gradient descent methods to find the global solution x (up to a global phase) without spectral initialization.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/15/2021

The global landscape of phase retrieval I: perturbed amplitude models

A fundamental task in phase retrieval is to recover an unknown signal ∈ ...
research
04/20/2022

Nearly optimal bounds for the global geometric landscape of phase retrieval

The phase retrieval problem is concerned with recovering an unknown sign...
research
02/22/2016

A Geometric Analysis of Phase Retrieval

Can we recover a complex signal from its Fourier magnitudes? More genera...
research
12/03/2017

Convolutional Phase Retrieval via Gradient Descent

We study the convolutional phase retrieval problem, which considers reco...
research
06/06/2022

Subspace Phase Retrieval

In this paper, we propose a novel algorithm, termed Subspace Phase Retri...
research
09/27/2018

Towards the optimal construction of a loss function without spurious local minima for solving quadratic equations

The problem of finding a vector x which obeys a set of quadratic equatio...
research
07/16/2020

DeepInit Phase Retrieval

This paper shows how data-driven deep generative models can be utilized ...

Please sign up or login with your details

Forgot password? Click here to reset