联合优化三维面部表情去除的表情和残差模型

Qian Zheng, Yueming Wang, Zhenfang Hu, X. Zhang, Zhao-Rong Wu, Gang Pan
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引用次数: 0

摘要

本文提出了一种面部表情去除方法,从单一的三维表情或非中性脸中恢复出三维中性脸。我们将三维非中性人脸视为其中性人脸和残差的和。如果建立了表情面与中性面三维顶点的对应关系,就可以满足这一要求。我们提出了一种非刚性变形方法来建立三维面之间的对应关系。然后,根据代数不等式,中性人脸模型的最小化可以用其上界的最小化来代替,即表情人脸模型和残差模型的误差。因此,我们对后两个模型的表示误差进行了共同优化,并建立了两个模型的表示系数之间的关系。给定一张表情脸作为输入,通过这两个模型中的关联表示参数可以推断出该表情脸对应的中性脸。在测试阶段,我们使用迭代联合拟合方案来获得更准确的恢复。为了评价我们的方法,进行了大量的实验。结果表明,该方法在平均均方根误差和识别率方面均优于现有方法,并且具有更好的视觉效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Jointly Optimizing Expressional and Residual Models for 3D Facial Expression Removal
This article proposes a facial expression removal method to recover a 3D neutral face from a single 3D expressional or non-neutral face. We treat a 3D non-neutral face as the sum of its neutral one and the residual. This can be satisfied if the correspondence between 3D vertices of expressional faces and those of neutral faces is established. We propose a non-rigid deformation method to establish the correspondence between 3D faces. Then, according to algebra inequality, the minimization of a neutral face model can be replaced by the minimization of its upper bound, i.e., the errors of an expressional face model and a residual model. Thus, we co-optimize the representation errors of the latter two models and build the relationship between the representation coefficients of the two models. Given an expressional face as the input, its corresponding neutral face can be inferred by the associative representation parameters in these two models. In the testing stage, we use an iterative joint fitting scheme to obtain a more accurate recovery. Extensive experiments are conducted to evaluate our method. The results show that our method obtains considerably better performance than existing methods in terms of average root mean square errors and recognition rates, and also better visual effects.
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