Image denoising via nonlocal means with noise-robust similarity

S. Kawata, Y-h. Taguchi, N. Matsumoto, K. Isogawa, T. Kaneko
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引用次数: 1

Abstract

We propose an effective image denoising method by revising the conventional “nonlocal means (NL-means)” method. Conventional NL-means replaces a noisy pixel by the weighted average of other reference pixels depending on the similarity between local neighborhoods of target pixel and reference pixels. Noise, however, reduces the similarity even within the same pattern blocks. This is due to the weighted average of dissimilar blocks of pixels, which makes the result image blurred or irregular. Hence, our proposal is to calculate the similarity with the combination of basis patterns correlated statistically with little noise through principal component analysis making use of local structures that have low correlation with incurred noise. The first step is to exclude the local structures of the given image whose statistical correlation with the original images is slight. The second step is to exclude basis patterns whose correlation with the target blocks is slight. Making use of the selected basis patterns, we can calculate the similarity robust to any noise. Consequently, high-quality images can be obtained. Comparing with other methods, our experiments show our method denoises effectively without causing any blur or irregularity.
图像的非局部去噪方法具有噪声鲁棒性
对传统的非局部均值(NL-means)方法进行了改进,提出了一种有效的图像去噪方法。传统的NL-means是根据目标像元与参考像元局部邻域的相似度,用其他参考像元的加权平均来替换有噪声的像元。然而,即使在相同的模式块内,噪声也会降低相似性。这是由于不同像素块的加权平均,这使得结果图像模糊或不规则。因此,我们的建议是利用与产生的噪声相关性较低的局部结构,通过主成分分析,通过统计相关的基图组合来计算相似度。第一步是排除给定图像中与原始图像统计相关性较小的局部结构。第二步是排除与目标块相关性很小的基本模式。利用所选择的基模式,我们可以计算出对任何噪声的鲁棒性相似度。因此,可以获得高质量的图像。实验结果表明,该方法去噪效果好,不会产生模糊和不规则现象。
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