Content-adaptive low rank regularization for image denoising

Hangfan Liu, Xinfeng Zhang, Ruiqin Xiong
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引用次数: 10

Abstract

Prior knowledge plays an important role in image denoising tasks. This paper utilizes the data of the input image to adaptively model the prior distribution. The proposed scheme is based on the observation that, for a natural image, a matrix consisted of its vectorized non-local similar patches is of low rank. We use a non-convex smooth surrogate for the low-rank regularization, and view the optimization problem from the empirical Bayesian perspective. In such framework, a parameter-free distribution prior is derived from the grouped non-local similar image contents. Experimental results show that the proposed approach is highly competitive with several state-of-art denoising methods in PSNR and visual quality.
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图像去噪的内容自适应低秩正则化
先验知识在图像去噪任务中起着重要的作用。本文利用输入图像的数据对先验分布进行自适应建模。该方案是基于对自然图像的观察,即由其矢量化的非局部相似块组成的矩阵秩低。我们使用非凸光滑代理来进行低秩正则化,并从经验贝叶斯的角度来看待优化问题。在该框架中,由分组的非局部相似图像内容导出无参数分布先验。实验结果表明,该方法在PSNR和视觉质量方面与几种最先进的去噪方法具有很强的竞争力。
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