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An Empirical Bayes Em-Wavelet Unification for Simultaneous Denoising, Interpolation, and/Or Demosaicing

机译:一种经验贝叶斯EM-小波统一,用于同时去噪,插值和/或去染症

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We present a unified framework for coupling the EM algorithm with the Bayesian hierarchical modeling of neighboring wavelet coefficients of image signals. Within this framework, problems with missing pixels or pixel components, and hence unobservable wavelet coefficients, are handled simultaneously with denoising. The hyper-parameters of the model are estimated via the marginal likelihood by the EM algorithm, and a part of the output of its E-step automatically provide optimal estimates, given the specified Bayesian model, of the noise-free image. This unified empirical-Bayes based framework, therefore, offers a statistically principled and extremely flexible approach to a wide range of pixel estimation problems including image denoising, image interpolation, demosaicing, or any combinations of them
机译:我们介绍了一种统一的框架,用于将EM算法耦合,与图像信号的相邻小波系数的贝叶斯分层建模耦合。 在该框架内,同时处理具有缺失像素或像素组件的问题,并因此与不可接受的小波系数进行处理。 通过EM算法经由边缘似然估计模型的超参数,并且其电子步骤的输出的一部分自动提供无噪声图像的指定贝叶斯模型的最佳估计。 因此,这一统一的实验室贝母框架提供了统计上的原则和极其灵活的方法,可实现各种像素估计问题,包括图像去噪,图像插值,去脱索或它们的任何组合

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