A matrix-free Levenberg-Marquardt algorithm for efficient ptychographic phase retrieval
Saugat Kandel, S. Maddali, Youssef S G Nashed, Stephan O Hruszkewycz,, Chris Jacobsen, Marc Allain

TL;DR
This paper introduces a matrix-free Levenberg-Marquardt algorithm using automatic differentiation for efficient and robust ptychographic phase retrieval, outperforming existing first-order methods in convergence and computational cost.
Contribution
It develops a matrix-free Levenberg-Marquardt algorithm with automatic differentiation for phase retrieval, enabling efficient constrained optimization without large matrix computations.
Findings
Outperforms first-order methods in convergence speed.
Works effectively for both unconstrained and constrained ptychographic problems.
Achieves superlinear convergence with comparable or lower computational cost.
Abstract
The phase retrieval problem, where one aims to recover a complex-valued image from far-field intensity measurements, is a classic problem encountered in a range of imaging applications. Modern phase retrieval approaches usually rely on gradient descent methods in a nonlinear minimization framework. Calculating closed-form gradients for use in these methods is tedious work, and formulating second order derivatives is even more laborious. Additionally, second order techniques often require the storage and inversion of large matrices of partial derivatives, with memory requirements that can be prohibitive for data-rich imaging modalities. We use a reverse-mode automatic differentiation (AD) framework to implement an efficient matrix-free version of the Levenberg-Marquardt (LM) algorithm, a longstanding method that finds popular use in nonlinear least-square minimization problems but which…
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Taxonomy
TopicsAdvanced X-ray Imaging Techniques · X-ray Spectroscopy and Fluorescence Analysis · Astrophysical Phenomena and Observations
