On Reconstruction of Binary Images by Efficient Sample-based Parameterization in Applications for Electrical Impedance Tomography
Paul R. Arbic II, Vladislav Bukshtynov

TL;DR
This paper introduces an efficient, sample-based parameterization method for reconstructing binary images in electrical impedance tomography, outperforming traditional methods in speed and stability, especially in noisy conditions.
Contribution
The paper presents a novel derivative-free optimization framework with sample-based geometry control for binary image reconstruction in EIT, enhancing efficiency and robustness.
Findings
Outperforms gradient-based methods in image quality and stability.
Achieves high computational efficiency with coordinate descent.
Demonstrates effectiveness in biomedical EIT applications.
Abstract
An efficient computational approach for optimal reconstruction of binary-type images suitable for models in various applications including biomedical imaging is developed and validated. The methodology includes derivative-free optimization supported by a set of sample solutions with customized geometry generated synthetically. The reduced dimensional control space is organized based on contributions from individual samples and the efficient parameterization obtained from the description of the samples' geometry. The entire framework has an easy-to-follow design due to a nominal number of tuning parameters which makes the approach simple for practical implementation in various settings, as well as for adjusting it to new models and enhancing the performance. High efficiency in computational time is achieved through applying the coordinate descent method to work with individual controls…
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