Wang Faqiang, Huang Haiyang, Liu Jun
IEEE Trans Image Process. 2019 Sep 25. doi: 10.1109/TIP.2019.2940496.
In this paper, the traditional model based variational methods and deep learning based algorithms are naturally integrated to address mixed noise removal, specially for Gaussian mixture noise and Gaussian-impulse noise removal problem. To be different from single type noise (e.g. Gaussian) removal, it is a challenge problem to accurately discriminate noise types and levels for each pixel. We propose a variational method to iteratively estimate the noise parameters, and then the algorithm can automatically classify the noise according to the different statistical parameters. The proposed variational problem can be separated into regularization, synthesis, parameters estimation and noise classification four steps with the operator splitting scheme. Each step is related to an optimization subproblem. To enforce the regularization, the deep learning method is employed to learn the natural images prior. Compared with some model based regularizations, the CNN regularizer can significantly improve the quality of the restored images. Compared with some learning based methods, the synthesis step can produce better reconstructions by analyzing the types and levels of the recognized noise. In our method, the convolution neutral network (CNN) can be regarded as an operator which associated to a variational functional. From this viewpoint, the proposed method can be extended to many image reconstruction and inverse problems. Numerical experiments in the paper show that our method can achieve some state-of-the-art results for Gaussian mixture noise and Gaussian-impulse noise removal.
在本文中,传统的基于模型的变分方法和基于深度学习的算法被自然地整合起来,以解决混合噪声去除问题,特别是高斯混合噪声和高斯脉冲噪声去除问题。与单一类型噪声(如高斯噪声)去除不同,准确区分每个像素的噪声类型和水平是一个具有挑战性的问题。我们提出一种变分方法来迭代估计噪声参数,然后算法可以根据不同的统计参数自动对噪声进行分类。所提出的变分问题可以通过算子分裂方案分为正则化、合成、参数估计和噪声分类四个步骤。每个步骤都与一个优化子问题相关。为了加强正则化,采用深度学习方法来学习自然图像先验。与一些基于模型的正则化相比,卷积神经网络(CNN)正则化可以显著提高恢复图像的质量。与一些基于学习的方法相比,合成步骤通过分析识别出的噪声的类型和水平可以产生更好的重建效果。在我们的方法中,卷积神经网络(CNN)可以被视为与一个变分泛函相关联的算子。从这个角度来看,所提出的方法可以扩展到许多图像重建和逆问题。本文中的数值实验表明,我们的方法在高斯混合噪声和高斯脉冲噪声去除方面可以取得一些领先的结果。