Figueiredo Mário A T, Bioucas-Dias José M, Nowak Robert D
Instituto de Telecomunicacões, Technical University of Lisbon, 1049-001 Lisboa, Portugal.
IEEE Trans Image Process. 2007 Dec;16(12):2980-91. doi: 10.1109/tip.2007.909318.
Standard formulations of image/signal deconvolution under wavelet-based priors/regularizers lead to very high-dimensional optimization problems involving the following difficulties: the non-Gaussian (heavy-tailed) wavelet priors lead to objective functions which are nonquadratic, usually nondifferentiable, and sometimes even nonconvex; the presence of the convolution operator destroys the separability which underlies the simplicity of wavelet-based denoising. This paper presents a unified view of several recently proposed algorithms for handling this class of optimization problems, placing them in a common majorization-minimization (MM) framework. One of the classes of algorithms considered (when using quadratic bounds on nondifferentiable log-priors) shares the infamous "singularity issue" (SI) of "iteratively reweighted least squares" (IRLS) algorithms: the possibility of having to handle infinite weights, which may cause both numerical and convergence issues. In this paper, we prove several new results which strongly support the claim that the SI does not compromise the usefulness of this class of algorithms. Exploiting the unified MM perspective, we introduce a new algorithm, resulting from using l1 bounds for nonconvex regularizers; the experiments confirm the superior performance of this method, when compared to the one based on quadratic majorization. Finally, an experimental comparison of the several algorithms, reveals their relative merits for different standard types of scenarios.
基于小波先验/正则化器的图像/信号去卷积标准公式会导致非常高维的优化问题,这些问题存在以下难点:非高斯(重尾)小波先验会导致目标函数是非二次的,通常不可微,有时甚至是非凸的;卷积算子的存在破坏了基于小波去噪简单性的可分离性。本文对最近提出的几种处理这类优化问题的算法给出了统一的观点,将它们置于一个通用的最大化-最小化(MM)框架中。所考虑的一类算法(在对不可微对数先验使用二次界时)存在“迭代重加权最小二乘”(IRLS)算法臭名昭著的“奇异性问题”(SI):即可能不得不处理无穷权重,这可能会导致数值和收敛问题。在本文中,我们证明了几个新结果,有力地支持了SI不会损害这类算法实用性的观点。利用统一的MM视角,我们引入了一种新算法,它是通过对非凸正则化器使用l1界得到的;实验证实了与基于二次最大化的算法相比,该方法具有更优的性能。最后,对几种算法的实验比较揭示了它们在不同标准类型场景下的相对优点。