In this work, we propose a new discretization for second-order total generalized variation (TGV) with some distinct properties compared to existing discrete formulations. The introduced model is based on same design principles as Condat's discrete total variation model (\textit{SIAM J. Imaging Sci}., 10(3), 1258--1290, 2017) and shares its benefits, in particular, improved quality for the solution of imaging problems. An algorithm for image denoising with second-order TGV using the new discretization is proposed. Numerical results obtained with this algorithm demonstrate the discretization's advantages. Moreover, in order to compare invariance properties of the new model, an algorithm for calculating the TGV value with respect to the new discretization model is given.
翻译:在这项工作中,我们建议对二级全局变异(TGV)进行新的分解,与现有的离散配方相比,它具有某些不同的特性。采用的模式所依据的设计原则与 Condat 的离散全变异模型(\ textit{SIAM J.image Sci}., 10(3), 1258-1290, 2017)一样,并分享其好处,特别是提高成像问题解决质量。提出了使用新的离散配方进行图像分解的二级TGV算法。从这一算法中获得的数字结果显示了离散的优点。此外,为了比较新模型的逆差特性,还给出了计算新离散模式TGV价值的算法。