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Bayesian Non-local Means Filter, Image Redundancy and Adaptive Dictionaries for Noise Removal

机译:贝叶斯非局部均值滤波器,图像冗余和自适应字典用于噪声消除

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Partial Differential equations (PDE), wavelets-based methods and neighborhood filters were proposed as locally adaptive machines for noise removal. Recently, Buades, Coll and Morel proposed the Non-Local (NL-) means filter for image denoising. This method replaces a noisy pixel by the weighted average of other image pixels with weights reflecting the similarity between local neighborhoods of the pixel being processed and the other pixels. The NL-means filter was proposed as an intuitive neighborhood filter but theoretical connections to diffusion and non-parametric estimation approaches are also given by the authors. In this paper we propose another bridge, and show that the NL-means filter also emerges from the Bayesian approach with new arguments. Based on this observation, we show how the performance of this filter can be significantly improved by introducing adaptive local dictionaries and a new statistical distance measure to compare patches. The new Bayesian NL-means filter is better parametrized and the amount of smoothing is directly determined by the noise variance (estimated from image data) given the patch size. Experimental results are given for real images with artificial Gaussian noise added, and for images with real image-dependent noise.
机译:提出了偏微分方程(PDE),基于小波的方法和邻域滤波器作为用于噪声消除的局部自适应机器。最近,Buades,Coll和Morel提出了用于图像去噪的非局部(NL-)均值滤波器。该方法用其他图像像素的加权平均值替换噪声像素,其权重反映了正在处理的像素和其他像素的局部邻域之间的相似性。 NL-均值滤波器被提议为一种直观的邻域滤波器,但作者还给出了与扩散和非参数估计方法的理论联系。在本文中,我们提出了另一座桥梁,并表明NL-均值滤波器也从贝叶斯方法中出现,并带有新的论点。基于此观察,我们展示了如何通过引入自适应局部字典和新的统计距离度量来比较色标来显着改善此滤波器的性能。新的贝叶斯NL-均值滤波器的参数化更好,平滑程度直接取决于给定补丁大小的噪声方差(根据图像数据估算)。对于添加了人工高斯噪声的真实图像以及具有真实图像相关噪声的图像,给出了实验结果。

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