基于bm3d正则化的泊松图像重建的近端梯度方法

Willem J. Marais, R. Willett
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引用次数: 20

摘要

研究了受泊松噪声破坏的图像的去噪与重建问题。泊松噪声是在计算光子发射或散射时产生的。在各种应用领域,如天文学和医学成像,光子计数低导致非常低的信噪比图像。最近,Azzari和Foi研究了在粗糙到精细的图像分辨率框架中使用BM3D进行泊松图像去噪。具体来说,在粗分辨率下的去噪结果用于改进下一个更精细分辨率的去噪,从而得到最先进的去噪结果。本文提出了重建问题的另一种正则化最大似然公式,并解释了如何使用粗到细的近端梯度优化算法来解决它。将本文提出的方法与Azzari和Foi的方法进行了比较,发现两者具有很强的相似性。本文提出的方法的优点是它很容易推广到逆问题设置,这在去噪缺失像素的泊松噪声图像(即图像补漆)的背景下得到了证明;相比之下,Azzari和Foi提出的从粗到细的BM3D去噪方法没有已知的推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proximal-Gradient methods for poisson image reconstruction with BM3D-Based regularization
This paper considers the denoising and reconstruction of images corrupted by Poisson noise. Poisson noise arises in the context of counting the emission or scattering of photons. In various application domains, such as astronomy and medical imaging, photons counts are low resulting in very low signal-to-noise ratio images. Recently, Azzari and Foi investigated using BM3D for Poisson image denoising in a coarse-to-fine image resolution framework. Specifically, the denoised result at a coarse resolution is used to improve the denoising of the next finer resolution, resulting in state-of-the-art denoising results. This paper presents an alternative regularized maximum likelihood formulation of the reconstruction problem, and explains how it can be solved using a coarse-to-fine proximal gradient optimization algorithm. The proposed methods of this paper are compared to the methods of Azzari and Foi, highlighting their strong similarities. The advantage of the proposed method of this paper is that it easily generalizes to inverse problem settings, which is demonstrated in the context of denoising a Poisson noisy image with missing pixels (i.e. image inpainting); in contrast there is no known generalization of the coarse-to-fine BM3D denoising method that was proposed by Azzari and Foi.
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