External Patch Prior Guided Internal Clustering for Image Denoising

Fei Chen, Lei Zhang, Huimin Yu
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引用次数: 145

Abstract

Natural image modeling plays a key role in many vision problems such as image denoising. Image priors are widely used to regularize the denoising process, which is an ill-posed inverse problem. One category of denoising methods exploit the priors (e.g., TV, sparsity) learned from external clean images to reconstruct the given noisy image, while another category of methods exploit the internal prior (e.g., self-similarity) to reconstruct the latent image. Though the internal prior based methods have achieved impressive denoising results, the improvement of visual quality will become very difficult with the increase of noise level. In this paper, we propose to exploit image external patch prior and internal self-similarity prior jointly, and develop an external patch prior guided internal clustering algorithm for image denoising. It is known that natural image patches form multiple subspaces. By utilizing Gaussian mixture models (GMMs) learning, image similar patches can be clustered and the subspaces can be learned. The learned GMMs from clean images are then used to guide the clustering of noisy-patches of the input noisy images, followed by a low-rank approximation process to estimate the latent subspace for image recovery. Numerical experiments show that the proposed method outperforms many state-of-the-art denoising algorithms such as BM3D and WNNM.
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外部补丁先验引导内聚类图像去噪
自然图像建模在图像去噪等许多视觉问题中起着关键作用。图像先验被广泛用于正则化去噪过程,这是一个不适定逆问题。一类去噪方法利用从外部干净图像中学习到的先验(如TV、稀疏性)来重建给定的噪声图像,而另一类方法利用内部先验(如自相似性)来重建潜在图像。虽然基于内部先验的方法已经取得了令人印象深刻的去噪效果,但随着噪声水平的提高,视觉质量的提高将变得非常困难。本文提出联合利用图像外部补丁先验和内部自相似先验,开发一种外部补丁先验引导的图像内部聚类去噪算法。众所周知,自然图像块会形成多个子空间。利用高斯混合模型(GMMs)学习,可以对图像相似块进行聚类并学习子空间。然后使用从干净图像中学习到的gmm来指导输入噪声图像的噪声斑块聚类,然后使用低秩逼近过程来估计图像恢复的潜在子空间。数值实验表明,该方法优于BM3D和WNNM等现有的去噪算法。
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