Stabilizing Laplacian Inversion in Fokker-Planck Image Retrieval using the Transport-of-Intensity Equation
Samantha J Alloo, Kaye S Morgan

TL;DR
This paper introduces an automated iterative algorithm to optimize the regularization of the inverse Laplacian in Fokker-Planck-based X-ray image retrieval, improving stability and usability by leveraging phase solutions from the transport-of-intensity equation.
Contribution
The paper presents a novel automated regularization parameter optimization method for Fokker-Planck-based image retrieval, enhancing stability and eliminating manual parameter tuning.
Findings
Successfully applied to synchrotron SBXI data of a four-rod sample.
Achieved optimal phase and dark-field image retrieval without manual regularization tuning.
Improved stability of the inverse Laplacian operator near Fourier-space origin.
Abstract
X-ray attenuation, phase, and dark-field images provide complementary information. Different experimental techniques can capture these contrast mechanisms, and the corresponding images can be retrieved using various theoretical algorithms. Our previous works developed the Multimodal Intrinsic Speckle-Tracking (MIST) algorithm, which is suitable for multimodal image retrieval from speckle-based X-ray imaging (SBXI) data. MIST is based on the X-ray Fokker-Planck equation, requiring the inversion of derivative operators that are often numerically unstable. These instabilities can be addressed by employing regularization techniques, such as Tikhonov regularization. The regularization output is highly sensitive to the choice of the Tikhonov regularization parameter, making it crucial to select this value carefully and optimally. Here, we present an automated iterative algorithm to optimize…
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Taxonomy
TopicsMRI in cancer diagnosis · Advanced Mathematical Modeling in Engineering · Numerical methods in inverse problems
