Sparsity assisted solution to the twin image problem in phase retrieval
Charu Gaur, Baranidharan Mohan, and Kedar Khare

TL;DR
This paper introduces a sparsity-based method to solve the twin image problem in phase retrieval, enabling more accurate reconstruction without support modification, especially for centro-symmetric objects.
Contribution
The authors propose a novel sparsity-enhanced iterative algorithm that effectively mitigates the twin image issue without altering object support during phase retrieval.
Findings
Sparsity correlates with the ideal solution without twin images.
Sparsity enhancement improves phase retrieval accuracy.
Method works for binary and gray-scale phase objects.
Abstract
The iterative phase retrieval problem for complex-valued objects from Fourier transform magnitude data is known to suffer from the twin image problem. In particular, when the object support is centro-symmetric, the iterative solution often stagnates such that the resultant complex image contains the features of both the desired solution and its inverted and complex-conjugated replica. The conventional approach to address the twin image problem is to modify the object support during initial iterations which can possibly lead to elimination of one of the twin images. However, at present there seems to be no deterministic procedure to make sure that the twin image will always be very weak or absent. In this work we make an important observation that the ideal solution without the twin image is typically more sparse (in some suitable transform domain) as compared to the stagnated solution…
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