IEEE Trans Image Process. 2014 Mar;23(3):1060-72. doi: 10.1109/TIP.2014.2299065.
This paper addresses a new learning algorithm for the recently introduced co-sparse analysis model. First, we give new insights into the co-sparse analysis model by establishing connections to filter-based MRF models, such as the field of experts model of Roth and Black. For training, we introduce a technique called bi-level optimization to learn the analysis operators. Compared with existing analysis operator learning approaches, our training procedure has the advantage that it is unconstrained with respect to the analysis operator. We investigate the effect of different aspects of the co-sparse analysis model and show that the sparsity promoting function (also called penalty function) is the most important factor in the model. In order to demonstrate the effectiveness of our training approach, we apply our trained models to various classical image restoration problems. Numerical experiments show that our trained models clearly outperform existing analysis operator learning approaches and are on par with state-of-the-art image denoising algorithms. Our approach develops a framework that is intuitive to understand and easy to implement.
本文针对最近提出的协同稀疏分析模型提出了一种新的学习算法。首先,我们通过将协同稀疏分析模型与基于滤波器的马尔可夫随机场模型(如 Roth 和 Black 的专家场模型)建立联系,对协同稀疏分析模型进行了新的探讨。对于训练,我们引入了一种称为双层优化的技术来学习分析算子。与现有的分析算子学习方法相比,我们的训练过程具有不受分析算子约束的优点。我们研究了协同稀疏分析模型的不同方面的效果,并表明稀疏促进函数(也称为惩罚函数)是模型中最重要的因素。为了展示我们的训练方法的有效性,我们将训练好的模型应用于各种经典的图像恢复问题。数值实验表明,我们训练的模型明显优于现有的分析算子学习方法,并且与最先进的图像去噪算法相当。我们的方法提出了一个易于理解和实现的框架。