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Synthesizing Normalized Faces from Facial Identity Features

机译:从面部身份特征合成标准化面

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We present a method for synthesizing a frontal, neutral-expression image of a person's face given an input face photograph. This is achieved by learning to generate facial landmarks and textures from features extracted from a facial-recognition network. Unlike previous generative approaches, our encoding feature vector is largely invariant to lighting, pose, and facial expression. Exploiting this invariance, we train our decoder network using only frontal, neutral-expression photographs. Since these photographs are well aligned, we can decompose them into a sparse set of landmark points and aligned texture maps. The decoder then predicts landmarks and textures independently and combines them using a differentiable image warping operation. The resulting images can be usedfor a number of applications, such as analyzing facial attributes, exposure and white balance adjustment, or creating a 3-D avatar.
机译:我们介绍了一种用于在给定输入面部照片的人面部的正面,中性表达图像的方法。这是通过学习从面部识别网络中提取的特征生成面部地标和纹理来实现的。与以前的生成方法不同,我们的编码特征向量主要是不变的照明,姿势和面部表情。利用此不变性,我们只使用正面的中性表达照片培训我们的解码器网络。由于这些照片很好地,我们可以将它们分解为稀疏的地标点并对齐纹理地图。然后,解码器独立地预测地标和纹理,并使用可差的图像翘曲操作组合它们。得到的图像可以用于许多应用程序,例如分析面部属性,曝光和白平衡调整,或者创建三维化身。

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