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A semi-supervised framework for topology preserving performance-driven facial animation

机译:半监督框架,用于保留性能驱动的面部动画的拓扑

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摘要

In this paper, we divide performance-driven facial animation into two data transformation problems, facial expression retargeting and face driving, and report a semi-supervised framework to solve the two problems. The objective function includes two parts. In the first part, we unify the temporal and geometrical characteristics of facial expressions and face models as topology characteristics, and preserve the topology characteristics in manifold subspace during data transformation. In the second part, some given data are used as labels to guide the transformation. The proposed semi-supervised framework can be efficiently solved by a least square method. Experimental results show that the proposed framework outperforms existing methods in both facial expression retargeting and face driving.
机译:在本文中,我们将性能驱动的面部动画分为两个数据转换问题,即面部表情重定目标和面部驱动,并报告了一个半监督框架来解决这两个问题。目标函数包括两个部分。在第一部分中,我们将面部表情和面部模型的时间和几何特征统一为拓扑特征,并在数据转换期间将拓扑特征保留在流形子空间中。在第二部分中,一些给定的数据用作标签来指导转换。所提出的半监督框架可以通过最小二乘法有效地解决。实验结果表明,该框架在面部表情重定向和面部驱动方面均优于现有方法。

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