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Fast Face Image Synthesis With Minimal Training

机译:快速的人脸图像合成,训练最少

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We propose an algorithm to generate realistic face images of both real and synthetic identities (people who do not exist) with different facial yaw, shape and resolution. The synthesized images can be used to augment datasets to train CNNs or as massive distractor sets for biometric verification experiments without any privacy concerns. Additionally, law enforcement can make use of this technique to train forensic experts to recognize faces. Our method samples face components from a pool of multiple face images of real identities to generate the synthetic texture. Then, a real 3D head model compatible to the generated texture is used to render it under different facial yaw transformations. We perform multiple quantitative experiments to assess the effectiveness of our synthesis procedure in CNN training and its potential use to generate distractor face images. Additionally, we compare our method with popular GAN models in terms of visual quality and execution time.
机译:我们提出了一种算法,以产生具有不同面部偏航,形状和分辨率的真实和合成身份(人们不存在的人)的现实脸部图像。合成的图像可用于增强数据集以培训CNNS,或者在没有任何隐私问题的生物识别实验中为生物识别实验中的大规模分散组。此外,执法部门可以利用这种技术培训法医专家来识别面孔。我们的方法从真实身份的多个面部图像的池中采样面部组件以产生合成纹理。然后,使用与所生成的纹理兼容的真正的3D头模型用于使其在不同的面部偏航变换下。我们进行多种定量实验,以评估CNN培训中的合成程序的有效性及其潜在用来产生牵引性的人面部图像。此外,我们在视觉质量和执行时间方面将我们的方法与流行的GaN模型进行比较。

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