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Data-Driven Feature-Based 3D Face Synthesis

机译:基于数据驱动的基于特征的3D人脸合成

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摘要

This paper presents a novel data-driven method for creating varied realistic face models by synthesizing a set of facial features according to intuitive high-level control parameters. Our method takes as examples 3D face scans in order to exploit the variations presented in the real faces of individuals. We use an automatic model fitting approach for the 3D registration problem. Once we have a common surface representation for each example, we form feature shape spaces by applying principal component analysis (PCA) to the data sets of facial feature shapes. Using PCA coefficients as a compact shape representation, we approach the shape synthesis problem by forming scattered data interpolation functions that are devoted to the generation of desired shape by taking the anthropometric parameters as input. The correspondence among all exemplar textures is obtained by parameterizing a 3D generic mesh over a 2D image domain. The new feature texture with desired attributes is synthesized by interpolating the example textures. Apart from an initial tuning of feature point positions and assignment of texture attribute values, our method is fully automated.
机译:本文提出了一种新颖的数据驱动方法,可通过根据直观的高级控制参数合成一组面部特征来创建各种逼真的面部模型。我们的方法以3D面部扫描为例,以利用个人真实面孔中呈现的变化。对于3D注册问题,我们使用自动模型拟合方法。一旦每个示例都有一个通用的表面表示,就可以通过将主成分分析(PCA)应用于面部特征形状的数据集来形成特征形状空间。使用PCA系数作为紧凑的形状表示,我们通过将人体测量参数作为输入,形成分散的数据插值函数来解决形状合成问题,这些函数专门用于生成所需形状。通过在2D图像域上参数化3D通用网格,可以获得所有示例纹理之间的对应关系。通过插入示例纹理,可以合成具有所需属性的新特征纹理。除了对特征点位置的初始调整和纹理属性值的分配以外,我们的方法是完全自动化的。

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