Phase Retrieval with Background Information: Decreased References and Efficient Methods
Ziyang Yuan, Haoxing Yang, Ningyi Leng, Hongxia Wang

TL;DR
This paper improves phase retrieval by reducing background information requirements, introduces two Douglas-Rachford based methods with convergence guarantees, and demonstrates superior performance over existing approaches.
Contribution
It provides new theoretical bounds on background information needed for unique solutions and proposes two novel algorithms with proven convergence properties.
Findings
Background requirement can be nearly halved for 2-D signals.
Proposed BDR and CBDR methods outperform PGD in recovery rate.
CBDR guarantees global convergence with sufficient background.
Abstract
Fourier phase retrieval(PR) is a severely ill-posed inverse problem that arises in various applications. To guarantee a unique solution and relieve the dependence on the initialization, background information can be exploited as a structural priors. However, the requirement for the background information may be challenging when moving to the high-resolution imaging. At the same time, the previously proposed projected gradient descent(PGD) method also demands much background information. In this paper, we present an improved theoretical result about the demand for the background information, along with two Douglas Rachford(DR) based methods. Analytically, we demonstrate that the background required to ensure a unique solution can be decreased by nearly for the 2-D signals compared to the 1-D signals. By generalizing the results into -dimension, we show that the length of the…
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Taxonomy
TopicsAdvanced X-ray Imaging Techniques · Optical measurement and interference techniques · Non-Destructive Testing Techniques
