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Sparse Signal Reconstruction for Overdispersed Low-photon Count Biomedical Imaging Using p\ell_p Total Variation

IEEE International Symposium on Biomedical Imaging (ISBI), 2024
Main:4 Pages
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Bibliography:1 Pages
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Abstract

The negative binomial model, which generalizes the Poisson distribution model, can be found in applications involving low-photon signal recovery, including medical imaging. Recent studies have explored several regularization terms for the negative binomial model, such as the p\ell_p quasi-norm with 0<p<10 < p < 1, 1\ell_1 norm, and the total variation (TV) quasi-seminorm for promoting sparsity in signal recovery. These penalty terms have been shown to improve image reconstruction outcomes. In this paper, we investigate the p\ell_p quasi-seminorm, both isotropic and anisotropic p\ell_p TV quasi-seminorms, within the framework of the negative binomial statistical model. This problem can be formulated as an optimization problem, which we solve using a gradient-based approach. We present comparisons between the negative binomial and Poisson statistical models using the p\ell_p TV quasi-seminorm as well as common penalty terms. Our experimental results highlight the efficacy of the proposed method.

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