Total Generalized Variation (TGV) has recently been proven certainly successful in image processing for preserving sharp features as well as smooth transition variations. However, none of the existing works aims at numerically calculating TGV over triangular meshes. In this paper, we develop a novel numerical framework to discretize the second-order TGV over triangular meshes. Further, we propose a TGV-based variational model to restore the face normal field for mesh denoising. The TGV regularization in the proposed model is represented by a combination of a first- and second-order term, which can be automatically balanced. This TGV regularization is able to locate sharp features and preserve them via the first-order term, while recognize smoothly curved regions and recover them via the second-order term. To solve the optimization problem, we introduce an efficient iterative algorithm based on variable-splitting and augmented Lagrangian method. Extensive results and comparisons on synthetic and real scanning data validate that the proposed method outperforms the state-of-the-art methods visually and numerically.
翻译:总体变异(TGV)最近被证明在保存锐利特征和平稳过渡变异的图像处理方面确实取得了成功,然而,现有的工作没有一项旨在用数字方法计算三角间距的TGV。在本文件中,我们开发了一个新的数字框架,将二级TGV分解成三角间距。此外,我们提议了一个基于TGV的变异模型,以恢复表面正常字段,进行网目脱色。拟议模式中的TGV正规化由一等和二等术语的组合代表,可以自动平衡。TGV正规化能够定位尖锐特征,并通过一等术语保存这些特征,同时确认曲线曲线区域,并通过二等术语恢复这些特征。为了解决优化问题,我们采用了基于变异和增强拉格朗加法的高效迭代算法。关于合成和真实扫描数据的广泛结果和比较证实,拟议的方法在视觉和数字上超越了最先进的方法。