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Main Authors: Mamba, Sinethemba Neliswa, Danielewicz, Pawel
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.03458
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author Mamba, Sinethemba Neliswa
Danielewicz, Pawel
author_facet Mamba, Sinethemba Neliswa
Danielewicz, Pawel
contents Iterative deblurring, notably the Richardson-Lucy algorithm with and without regularization, is analyzed in the context of nuclear and high-energy physics applications. In these applications, probability distributions may be discretized into a few bins, measurement statistics can be high, and instrument performance can be well understood. In such circumstances, it is essential to understand the deblurring first without any explicit noise considerations. We employ singular value decomposition for the blurring matrix in a low-count pixel system. A strong blurring may yield a null space for the blurring matrix. Yet, a nonnegativity constraint for images built into the deblurring may help restore null-space content in a high-contrast image with zero or low intensity for a sufficient number of pixels. For low-contrast images, control over null-space content can be achieved through regularization. When regularization is applied, the blurred image is, in practice, restored to one that is still blurred but less than the starting image.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03458
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Analysis of Iterative Deblurring: No Explicit Noise
Mamba, Sinethemba Neliswa
Danielewicz, Pawel
Numerical Analysis
High Energy Physics - Experiment
Nuclear Experiment
Primary: 65R30, 65R32, Secondary: 65Z05
Iterative deblurring, notably the Richardson-Lucy algorithm with and without regularization, is analyzed in the context of nuclear and high-energy physics applications. In these applications, probability distributions may be discretized into a few bins, measurement statistics can be high, and instrument performance can be well understood. In such circumstances, it is essential to understand the deblurring first without any explicit noise considerations. We employ singular value decomposition for the blurring matrix in a low-count pixel system. A strong blurring may yield a null space for the blurring matrix. Yet, a nonnegativity constraint for images built into the deblurring may help restore null-space content in a high-contrast image with zero or low intensity for a sufficient number of pixels. For low-contrast images, control over null-space content can be achieved through regularization. When regularization is applied, the blurred image is, in practice, restored to one that is still blurred but less than the starting image.
title Analysis of Iterative Deblurring: No Explicit Noise
topic Numerical Analysis
High Energy Physics - Experiment
Nuclear Experiment
Primary: 65R30, 65R32, Secondary: 65Z05
url https://arxiv.org/abs/2407.03458