The problem of restoring images corrupted by Poisson noise is common in many application fields and, because of its intrinsic ill posedness, it requires regularization techniques for its solution. The effectiveness of such techniques depends on the value of the regularization parameter balancing data fidelity and regularity of the solution. Here we consider the Total Generalized Variation regularization introduced in [SIAM J. Imag. Sci, 3(3), 492-526, 2010], which has demonstrated its ability of preserving sharp features as well as smooth transition variations, and introduce an automatic strategy for defining the value of the regularization parameter. We solve the corresponding optimization problem by using a 3-block version of ADMM. Preliminary numerical experiments support the proposed approach.
翻译:Poisson噪音腐蚀的图像的恢复问题在许多应用领域很常见,而且由于其内在的不完善,需要正规化技术加以解决。这些技术的有效性取决于在数据忠诚和解决方案的规律性之间平衡的正规化参数的价值。这里我们考虑[SIAM J. Imag. Sci, 3(3), 492-526, 2010] 中引入的通用化全变式正规化,这表明它有能力保持锐利的特征和平稳的过渡变异,并采用自动战略确定正规化参数的价值。我们通过使用ADMM的3个区版本来解决相应的优化问题。初步数字实验支持拟议方法。