使用合成VAEs建模面部几何

Timur M. Bagautdinov, Chenglei Wu, Jason M. Saragih, P. Fua, Yaser Sheikh
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引用次数: 93

摘要

我们提出了一种使用深度生成模型学习非线性面部几何表示的方法。我们的模型是一个具有多层隐藏变量的变分自编码器,其中较低的层捕获全局几何形状,较高的层编码更多的局部变形。在此基础上,我们提出了一种新的面部几何参数化方法,该方法将人脸结构自然地分解为一组语义上有意义的细节层次。这种参数化使我们能够进行模型拟合,同时在不同类型的几何约束下捕获不同级别的细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Facial Geometry Using Compositional VAEs
We propose a method for learning non-linear face geometry representations using deep generative models. Our model is a variational autoencoder with multiple levels of hidden variables where lower layers capture global geometry and higher ones encode more local deformations. Based on that, we propose a new parameterization of facial geometry that naturally decomposes the structure of the human face into a set of semantically meaningful levels of detail. This parameterization enables us to do model fitting while capturing varying level of detail under different types of geometrical constraints.
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