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Wavelet Denoising Based on the MAP Estimation Using the BKF Prior With Application to Images and EEG Signals

机译:基于先验BKF的MAP估计的小波去噪,并应用于图像和脑电信号

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摘要

This paper presents a novel nonparametric Bayesian estimator for signal and image denoising in the wavelet domain. This approach uses a prior model of the wavelet coefficients designed to capture the sparseness of the wavelet expansion. A new family of Bessel K Form (BKF) densities are designed to fit the observed histograms, so as to provide a probabilistic model for the marginal densities of the wavelet coefficients. This paper first shows how the BKF prior can characterize images belonging to Besov spaces. Then, a new hyper-parameters estimator based on EM algorithm is designed to estimate the parameters of the BKF density; and, it is compared with a cumulants-based estimator. Exploiting this prior model, another novel contribution is to design a Bayesian denoiser based on the Maximum A Posteriori (MAP) estimation under the 0–1 loss function, for which we formally establish the mathematical properties and derive a closed-form expression. Finally, a comparative study on a digitized database of natural images and biomedical signals shows the effectiveness of this new Bayesian denoiser compared to other classical and Bayesian denoising approaches. Results on biomedical data illustrate the method in the temporal as well as the time-frequency domain.
机译:本文提出了一种用于小波域信号和图像去噪的新型非参数贝叶斯估计器。该方法使用小波系数的先验模型,该模型设计为捕获小波展开的稀疏性。设计了一个新的Bessel K形式(BKF)密度族以适合观察到的直方图,从而为小波系数的边际密度提供了一个概率模型。本文首先展示了BKF先验如何表征Besov空间的图像。然后,设计了一种新的基于EM算法的超参数估计器来估计BKF密度的参数。并将其与基于累积量的估计量进行比较。利用此先前模型,另一个新颖的贡献是基于0–1损失函数下的最大后验(MAP)估计来设计贝叶斯去噪器,为此我们正式建立数学特性并得出封闭形式。最后,对自然图像和生物医学信号的数字化数据库进行的比较研究表明,与其他经典和贝叶斯去噪方法相比,这种新型贝叶斯去噪器的有效性。生物医学数据的结果在时域和时频域中都说明了该方法。

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