Institute of Information Science, Academia Sinica, Taipei 115, Taiwan.
IEEE Trans Image Process. 2013 Apr;22(4):1277-90. doi: 10.1109/TIP.2012.2220150. Epub 2012 Sep 21.
From the perspective of the Bayesian approach, the denoising problem is essentially a prior probability modeling and estimation task. In this paper, we propose an approach that exploits a hidden Bayesian network, constructed from wavelet coefficients, to model the prior probability of the original image. Then, we use the belief propagation (BP) algorithm, which estimates a coefficient based on all the coefficients of an image, as the maximum-a-posterior (MAP) estimator to derive the denoised wavelet coefficients. We show that if the network is a spanning tree, the standard BP algorithm can perform MAP estimation efficiently. Our experiment results demonstrate that, in terms of the peak-signal-to-noise-ratio and perceptual quality, the proposed approach outperforms state-of-the-art algorithms on several images, particularly in the textured regions, with various amounts of white Gaussian noise.
从贝叶斯方法的角度来看,去噪问题本质上是一个先验概率建模和估计任务。在本文中,我们提出了一种利用由小波系数构建的隐藏贝叶斯网络来对原始图像的先验概率进行建模的方法。然后,我们使用基于图像所有系数来估计系数的置信传播 (BP) 算法作为最大后验 (MAP) 估计器来推导出去噪后的小波系数。我们表明,如果网络是一个生成树,则标准 BP 算法可以有效地执行 MAP 估计。我们的实验结果表明,在所提出的方法中,无论是在峰值信噪比还是感知质量方面,都可以在几种图像上(特别是在纹理区域)以及不同程度的高斯白噪声情况下,都优于几种最先进的算法。