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Poisson-Skellam distribution based regularization conditional random field method for photon-limited Poisson image denoising

机译:基于Poisson-Skellam分布的正则化条件随机现场方法,用于光子有限的泊松图像去噪

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摘要

Photon-limited Poisson image denoising is urgent demand in many application fields, but is particularly challenging because the image structures are often damaged seriously. The effective using of the image prior is very important for improving the quality of the denoised image. In this paper, we exploit the prior of inner statistical relationships among pixels in local spatial neighborhood of the Poisson noisy image and introduce a new Skellam distribution based inner interaction potential function as a distance measurement between the pixels. In the framework of conditional random field (CRF) modeling, we propose a novel Poisson-Skellam distribution based regularization CRF model for photon-limited Poisson noise removal. Using the alternating direction method of multipliers technique, we extend our method to a flexible plug-and-play scheme in which we can combine powerful Gaussian denoising method to improve the denoising performance better.
机译:光子有限的泊松图像去噪是许多应用领域的迫切需求,但特别具有挑战性,因为图像结构通常严重损坏。 有效使用图像对于提高去噪图像的质量非常重要。 在本文中,我们利用泊松噪声图像的局部空间邻域的像素的内部统计关系之前的内部统计关系,并将基于Skellam分布的基于Skellam分布的内部交互势函数引入像素之间的距离测量。 在有条件的随机场(CRF)建模框架中,我们提出了一种基于新的Poisson-Skellam分布的正则化CRF模型,用于光子有限的泊松噪声。 使用乘法器技术的交替方向方法,我们将我们的方法扩展到灵活的即插即用方案,其中我们可以将强大的高斯去噪方法结合起来,更好地提高去噪性能。

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