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Adaptive image denoising by rigorous Bayesshrink thresholding

机译:严格的贝叶斯收缩阈值自适应图像去噪

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Optimum Bayes estimator for General Gaussian Distributed data is provided. The distribution describes a large class of signals including natural images. A wavelet thresholding method for image denoising is proposed. Interestingly we show that the Bayes estimator for this class of signals is behaving very similar to a thresholding approach. This will analytically confirm the importance of thresholding in these scenarios. In particular, when noise variance is less than the the noise-free signal variance, the Bayes estimator behaves similar to a soft thresholding method. We provide the optimum soft thresholding value that mimics the behavior of the Bayes estimator and minimizes the resulting error. The method denoted by Rigorous BayesShrink (R-BayesShrink) outperforms BayesShrink that is the existing most used and efficient soft thresholding method. While BayesShrink threshold is calculated by minimizing the Bayes risk numerically, our approach provides the optimum threshold analytically. Our simulation results show that R-BayesShrink outperforms the BayesShrink in most cases.
机译:提供了用于一般高斯分布的最佳贝叶斯估计器。该分布描述了包括自然图像在内的一大类信号。提出了一种用于图像去噪的小波阈值方法。有趣的是,我们表明此类信号的贝叶斯估计器的行为与阈值方法非常相似。通过分析,这将确定阈值在这些情况下的重要性。特别地,当噪声方差小于无噪声信号方差时,贝叶斯估计器的行为类似于软阈值方法。我们提供了最佳的软阈值,该阈值模仿了贝叶斯估计器的行为并最大程度地减少了产生的误差。由严格的贝叶斯收缩(R-BayesShrink)表示的方法优于贝叶斯收缩,而贝叶斯收缩是现有的最常用和最有效的软阈值方法。尽管通过数值上最小化贝叶斯风险来计算贝叶斯收缩阈值,但我们的方法在分析上提供了最佳阈值。我们的仿真结果表明,在大多数情况下,R-BayesShrink优于BayesShrink。

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