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Image Restoration Using a Universal GMM Learning and Adaptive Wiener Filter

机译:使用通用GMM学习和自适应维纳滤波器的图像恢复

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摘要

In this paper, an image restoration method using the Wiener filter is proposed. In order to bring the theory of the Wiener filter consistent with images that have spatially varying statistics, the proposed method adopts the locally adaptive Wiener filter (AWF) based on the universal Gaussian mixture distribution model (UNI-GMM) previously proposed for denoising. Applying the UNI-GMM-AWF for deconvolution problem, the proposed method employs the stationary Wiener filter (SWF) as a pre-filter. The SWF in the discrete cosine transform domain shrinks the blur point spread function and facilitates the modeling and filtering at the proceeding AWF. The SWF and UNI-GMM are learned using a generic training image set and the proposed method is tuned toward the image set. Simulation results are presented to demonstrate the effectiveness of the proposed method.
机译:本文提出了一种使用维纳滤波器的图像恢复方法。为了使维纳滤波器的理论与具有空间变化统计量的图像保持一致,该方法采用了基于先前提出的用于降噪的通用高斯混合分布模型(UNI-GMM)的局部自适应维纳滤波器(AWF)。将UNI-GMM-AWF用于解卷积问题,该方法采用固定式Wiener滤波器(SWF)作为预滤波器。离散余弦变换域中的SWF缩小了模糊点扩展函数,并有利于进行中的AWF的建模和滤波。使用通用训练图像集学习SWF和UNI-GMM,并朝图像集调整建议的方法。仿真结果表明了该方法的有效性。

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