IEEE Trans Image Process. 2016 Oct;25(10):4489-503. doi: 10.1109/TIP.2016.2590318. Epub 2016 Jul 11.
We propose an adaptive learning procedure to learn patch-based image priors for image denoising. The new algorithm, called the expectation-maximization (EM) adaptation, takes a generic prior learned from a generic external database and adapts it to the noisy image to generate a specific prior. Different from existing methods that combine internal and external statistics in ad hoc ways, the proposed algorithm is rigorously derived from a Bayesian hyper-prior perspective. There are two contributions of this paper. First, we provide full derivation of the EM adaptation algorithm and demonstrate methods to improve the computational complexity. Second, in the absence of the latent clean image, we show how EM adaptation can be modified based on pre-filtering. The experimental results show that the proposed adaptation algorithm yields consistently better denoising results than the one without adaptation and is superior to several state-of-the-art algorithms.
我们提出了一种基于自适应学习的方法,用于学习基于补丁的图像先验,以进行图像去噪。这个新算法被称为期望最大化(EM)自适应,它从通用外部数据库中学习到的一般先验,并将其适应于噪声图像,以生成特定的先验。与现有的以特定方式结合内部和外部统计数据的方法不同,该算法是从贝叶斯超先验的角度严格推导出来的。本文有两个贡献。首先,我们提供了 EM 自适应算法的完整推导,并演示了如何提高计算复杂度的方法。其次,在缺少潜在干净图像的情况下,我们展示了如何基于预滤波来修改 EM 自适应。实验结果表明,与未经自适应的算法相比,所提出的自适应算法始终能获得更好的去噪效果,并且优于几种最先进的算法。