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A Novel Bayesian Patch-Based Approach for Image Denoising

机译:一种新的贝叶斯补丁的图像去噪方法

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Recently patch-based image denoising techniques have gained the attention of researchers as it is being used in numerous image denoising applications. This article is proposing a new Bayesian Patch-based image denoising algorithm using Quaternion Wavelet Transform (QWT) for grayscale images. In the proposed work, a patch model has been used instead of the Gibbs distribution based energy model. Experimental results indicate that the proposed algorithm effectively diminishes noise. The results of the developed approach are also compared with other efficient image denoising algorithms such as Expected Patch Log Likelihood (EPLL), Block-matching and 3D filtering (BM3D), Patch-Based Locally Optimal Wiener (PLOW), Weighted Nuclear Norm Minimization (WNNM), Hybrid Robust Bilateral Filter-Total Variation Filter (RBF-TVF) and Hybrid Total Variation Filter-Weighted Bilateral Filter (TVF-WBF) methods. The comparison revealed that the outcomes of the given approach are much sharper, clearer, and having the highest quality in comparison with other patch-based methods.
机译:最近,基于补丁的图像去噪技术已经获得了研究人员的注意,因为它被用于许多图像去噪应用。本文使用四元数小波变换(QWT)提出了一种新的贝叶斯贴片的图像去噪算法,用于灰度图像。在所提出的工作中,已使用补丁模型代替基于GIBBS分发的能量模型。实验结果表明,该算法有效地减少了噪声。还将开发方法的结果与其他有效的图像去噪算法进行比较,例如预期的补丁日志似然(EPLL),块匹配和3D滤波(BM3D),基于补丁的局部最佳维纳(犁),加权核规范最小化( WNNM),混合强大的双侧滤波器 - 总变化滤波器(RBF-TVF)和混合总变化滤波加权双侧过滤器(TVF-WBF)方法。比较透露,与其他基于补丁的方法相比,给定方法的结果更加锐利,更清晰,并且具有最高质量。

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