Instituto de Telecomunicações, Instituto SuperiorTécnico, 1049-001 Lisboa, Portugal.
IEEE Trans Image Process. 2010 Jul;19(7):1720-30. doi: 10.1109/TIP.2010.2045029. Epub 2010 Mar 8.
Multiplicative noise (also known as speckle noise) models are central to the study of coherent imaging systems, such as synthetic aperture radar and sonar, and ultrasound and laser imaging. These models introduce two additional layers of difficulties with respect to the standard Gaussian additive noise scenario: (1) the noise is multiplied by (rather than added to) the original image; (2) the noise is not Gaussian, with Rayleigh and Gamma being commonly used densities. These two features of multiplicative noise models preclude the direct application of most state-of-the-art algorithms, which are designed for solving unconstrained optimization problems where the objective has two terms: a quadratic data term (log-likelihood), reflecting the additive and Gaussian nature of the noise, plus a convex (possibly nonsmooth) regularizer (e.g., a total variation or wavelet-based regularizer/prior). In this paper, we address these difficulties by: (1) converting the multiplicative model into an additive one by taking logarithms, as proposed by some other authors; (2) using variable splitting to obtain an equivalent constrained problem; and (3) dealing with this optimization problem using the augmented Lagrangian framework. A set of experiments shows that the proposed method, which we name MIDAL (multiplicative image denoising by augmented Lagrangian), yields state-of-the-art results both in terms of speed and denoising performance.
乘性噪声(也称为散斑噪声)模型是相干成像系统(如合成孔径雷达和声纳以及超声和激光成像)研究的核心。与标准高斯加性噪声情况相比,这些模型引入了两个额外的困难层:(1)噪声与原始图像相乘(而不是相加);(2)噪声不是高斯的,瑞利和伽马通常是常用的密度。乘性噪声模型的这两个特征排除了最先进的算法的直接应用,这些算法是为解决无约束优化问题而设计的,其中目标具有两个项:二次数据项(对数似然),反映了噪声的加性和高斯性质,加上凸(可能是非平滑)正则项(例如,全变差或基于小波的正则项/先验)。在本文中,我们通过以下方法解决这些困难:(1)通过取对数将乘性模型转换为加性模型,如其他一些作者所提出的;(2)使用变量分裂来获得等效的约束问题;(3)使用增广拉格朗日框架来处理这个优化问题。一组实验表明,我们称之为 MIDAL(基于增广拉格朗日的乘法图像去噪)的方法在速度和去噪性能方面都取得了最先进的结果。