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Affine Non-Local Means Image Denoising

机译:仿射非局部均值图像降噪

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This paper presents an extension of the Non-Local Means denoising method, that effectively exploits the affine invariant self-similarities present in the images of real scenes. Our method provides a better image denoising result by grounding on the fact that in many occasions similar patches exist in the image but have undergone a transformation. The proposal uses an affine invariant patch similarity measure that performs an appropriate patch comparison by automatically and intrinsically adapting the size and shape of the patches. As a result, more similar patches are found and appropriately used. We show that this image denoising method achieves top-tier performance in terms of PSNR, outperforming consistently the results of the regular Non-Local Means, and that it provides state-of-the-art qualitative results.
机译:本文提出了非局部均值去噪方法的扩展,该方法有效地利用了真实场景图像中存在的仿射不变自相似性。我们的方法基于这样一个事实,即在许多情况下图像中存在相似的色块但经过了变换,从而提供了更好的图像去噪结果。该提议使用仿射不变补丁相似度度量,该度量通过自动并固有地调整补丁的大小和形状来执行适当的补丁比较。结果,发现并适当使用了更多相似的补丁。我们表明,这种图像去噪方法在PSNR方面达到了顶级性能,始终优于常规非局部均值的结果,并且它提供了最新的定性结果。

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