盲图像去噪的迭代泊松高斯噪声参数估计

A. Jezierska, J. Pesquet, Hugues Talbot, C. Chaux
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引用次数: 10

摘要

本文研究了泊松-高斯噪声统计下单幅图像的噪声参数估计问题。该问题是在一个混合离散-连续优化框架内表述的。该方法对感兴趣的信号和噪声参数进行联合估计。这是通过在优化的准则中引入可调节的正则化项以及数据保真度误差测量来实现的。通过交替求标签域和噪声参数向量的最小值来迭代求最优解。在每次迭代中使用期望最大化方法更新噪声参数。该算法的灵感来自矢量量化的空间正则化方法。我们说明了我们的方法对宏观共聚焦图像的有用性。将识别出的噪声参数应用到去噪算法中,从而得到一个完整的去噪方案。
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Iterative poisson-Gaussian noise parametric estimation for blind image denoising
This paper deals with noise parameter estimation from a single image under Poisson-Gaussian noise statistics. The problem is formulated within a mixed discrete-continuous optimization framework. The proposed approach jointly estimates the signal of interest and the noise parameters. This is achieved by introducing an adjustable regularization term inside an optimized criterion, together with a data fidelity error measure. The optimal solution is sought iteratively by alternating the minimization of a label field and of a noise parameter vector. Noise parameters are updated at each iteration using an Expectation-Maximization approach. The proposed algorithm is inspired from a spatial regularization approach for vector quantization. We illustrate the usefulness of our approach on macroconfocal images. The identified noise parameters are applied to a denoising algorithm, so yielding a complete denoising scheme.
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