重新定义自然图像的自相似度,利用图信号梯度去噪

Jiahao Pang, Gene Cheung, Wei Hu, O. Au
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引用次数: 29

摘要

图像去噪是最基本的逆成像问题。作为一个欠定问题,适当的图像先验定义对问题进行正则化至关重要。最近提出的图像去噪的先验算法有:i)图拉普拉斯正则化,其中假设给定的像素块在图信号域中是光滑的;ii)自相似性先验,即假设图像斑块在非局部空间区域中在整个自然图像中反复出现。在我们的第一个贡献中,我们证明了图拉普拉斯正则化器收敛于连续时间函数对立物,并且仔细选择其特征可以导致判别信号先验。在我们的第二篇论文中,我们根据斑块梯度重新定义了斑块自相似性,并认为新的定义可以更准确地估计图拉普拉斯矩阵,从而获得更好的图像去噪性能。实验表明,基于图拉普拉斯正则化和基于梯度的自相似度的算法比非局部均值(NLM)去噪的PSNR提高了1.4 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Redefining self-similarity in natural images for denoising using graph signal gradient
Image denoising is the most basic inverse imaging problem. As an under-determined problem, appropriate definition of image priors to regularize the problem is crucial. Among recent proposed priors for image denoising are: i) graph Laplacian regularizer where a given pixel patch is assumed to be smooth in the graph-signal domain; and ii) self-similarity prior where image patches are assumed to recur throughout a natural image in non-local spatial regions. In our first contribution, we demonstrate that the graph Laplacian regularizer converges to a continuous time functional counterpart, and careful selection of its features can lead to a discriminant signal prior. In our second contribution, we redefine patch self-similarity in terms of patch gradients and argue that the new definition results in a more accurate estimate of the graph Laplacian matrix, and thus better image denoising performance. Experiments show that our designed algorithm based on graph Laplacian regularizer and gradient-based self-similarity can outperform non-local means (NLM) denoising by up to 1.4 dB in PSNR.
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