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Gabor feature based nonlocal means filter for textured image denoising

机译:基于Gabor特征的非局部均值滤波器,用于纹理图像去噪

摘要

The nonlocal means (NLM) filter has distinct advantages over traditional image denoising techniques. However, in spite of its simplicity, the pixel value-based self-similarity measure used by the NLM filter is intrinsically less robust when applied to images with non-stationary contents. In this paper, we use Gabor-based texture features to measure the self-similarity, and thus propose the Gabor feature based NLM (GFNLM) filter for textured image denoising. This filter recovers noise-corrupted images by replacing each pixel value with the weighted sum of pixel values in its search window, where each weight is defined based on the Gabor-based texture similarity measure. The GFNLM filter has been compared to the classical NLM filter and four other state-of-the-art image denoising algorithms in textured images degraded by additive Gaussian noise. Our results show that the proposed GFNLM filter can denoise textured images more effectively and robustly while preserving the texture information.
机译:与传统的图像降噪技术相比,非局部均值(NLM)滤波器具有明显的优势。但是,尽管其简单性,但当将NLM滤波器应用于基于非平稳内容的图像时,NLM过滤器使用的基于像素值的自相似性度量本质上就不那么健壮。在本文中,我们使用基于Gabor特征的纹理特征来测量自相似性,从而提出了基于Gabor特征的NLM(GFNLM)滤波器对纹理图像进行去噪。该过滤器通过在其搜索窗口中将每个像素值替换为像素值的加权和来恢复受噪声破坏的图像,其中每个权重均基于基于Gabor的纹理相似性度量来定义。 GFNLM滤波器已与经典NLM滤波器以及其他四项最新的图像去噪算法进行了比较,该算法在因加性高斯噪声而退化的纹理图像中得到了改善。我们的结果表明,提出的GFNLM滤波器可以在保留纹理信息的同时更有效,更强大地对纹理图像进行降噪。

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