Photoacoustic Iterative Optimization Algorithm with Shape Prior Regularization
Yu Zhang, Shuang Li, Yibing Wang, Yu Sun, Wenyi Xiang

TL;DR
This paper introduces a novel shape prior regularization method for photoacoustic imaging that leverages probability matrices from multiple reconstructions to enhance image quality, especially with sparse data.
Contribution
The proposed iterative optimization algorithm with shape prior is a new approach that improves photoacoustic image reconstruction by effectively reducing noise and artifacts.
Findings
Enhanced image quality in sparse view scenarios
Superior performance demonstrated in simulations and real experiments
Effective noise and artifact suppression
Abstract
Photoacoustic imaging (PAI) suffers from inherent limitations that can degrade the quality of reconstructed results, such as noise, artifacts and incomplete data acquisition caused by sparse sampling or partial array detection. In this study, we proposed a new optimization method for both two-dimensional (2D) and three-dimensional (3D) PAI reconstruction results, called the regularized iteration method with shape prior. The shape prior is a probability matrix derived from the reconstruction results of multiple sets of random partial array signals in a computational imaging system using any reconstruction algorithm, such as Delay-and-Sum (DAS) and Back-Projection (BP). In the probability matrix, high-probability locations indicate high consistency among multiple reconstruction results at those positions, suggesting a high likelihood of representing the true imaging results. In contrast,…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging · Thermography and Photoacoustic Techniques · Optical Systems and Laser Technology
