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Sparse nonlocal priors based two-phase approach for mixed noise removal

机译:基于稀疏非局部先验的两阶段混合噪声去除方法

摘要

Abstract Mixed noise removal is a challenging problem due to the complexity of statistical model of image noise. Additive white Gaussian noise (AWGN) combined with impulse noise (IN) is a representative among commonly encountered mixed noise. At present, nonlocal self-similarity (NSS) prior coupled with adaptive regularization have shown great potential in AWGN removal and led to satisfactory denoising performance. However, few studies unify these properties to remove mixture of AWGN and IN. In this paper, we propose a simple yet effective method, namely sparse nonlocal priors based two-phase approach (SNTP), for mixed noise removal. In SNTP, a median-type filter is used to detect outlier pixels which are likely to be corrupted by IN, and the remaining pixels are mainly corrupted by AWGN. We recover the image by encoding free-outlier pixels over a pre-learned dictionary to remove AWGN, and integrate the image sparse nonlocal priors as a regularization term. Meanwhile, adaptive regularization is used to further improve the denoising performance. Experimental results show that the proposed SNTP algorithm outperforms state-of-the-art mixed noise removal methods in terms of both quantitative measures and visual perception quality.
机译:摘要由于图像噪声统计模型的复杂性,混合噪声去除是一个具有挑战性的问题。加性高斯白噪声(AWGN)与脉冲噪声(IN)相结合是常见混合噪声中的代表。目前,先验的非局部自相似性(NSS)与自适应正则化相结合在AWGN去除中显示出了巨大的潜力,并带来了令人满意的降噪性能。然而,很少有研究统一这些特性以去除AWGN和IN的混合物。在本文中,我们提出了一种简单而有效的方法,即基于稀疏非局部先验的两阶段方法(SNTP),用于混合噪声去除。在SNTP中,中值类型滤波器用于检测可能被IN破坏的异常像素,而其余像素主要被AWGN破坏。我们通过在预先学习的字典上编码游离像素来恢复图像,以去除AWGN,并将图像稀疏的非局部先验积分作为正则化项。同时,自适应正则化被用于进一步提高去噪性能。实验结果表明,所提出的SNTP算法在量化指标和视觉感知质量方面均优于最新的混合噪声消除方法。

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