面部衰老的迹象

Jing Yang, Caizeng Ye, Bei Han, Jilin Qin, Lei Peng
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引用次数: 0

摘要

跨年龄图像生成技术是在原始人脸图像的基础上生成跨年龄的人脸图像。合成的人脸图像可以显示特定年龄的皮肤、皱纹和头发等面部细节。该技术可广泛应用于影视、动漫、公共安全等领域。跨年龄人脸合成技术可分为传统的跨年龄人脸合成技术和基于生成对抗网络模型的跨年龄人脸合成技术。随着GAN的不断发展,基于生成对抗网络模型的技术在人脸合成领域取得了更大的进步和优势。本文模型在生成对抗网络模型的基础上,结合了条件自编码器和StyleGAN模型的优点,在特征对比装置的使用上进行了创新,可以生成符合年龄变化逻辑的高清人脸图像,有效避免了器官变形、身份不一致等问题的出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face aging on SiGan
Cross-age image generation technology is to generate cross-age face images on the basis of the original face image. The synthetic face image can show facial details such as skin, wrinkles and hair at a certain age. The technology can be widely used in film and television, animation, public safety and other fields. Cross-age face synthesis techniques can be divided into traditional cross-age face synthesis techniques and cross-age face synthesis techniques based on generative adversarial network models. With the continuous development of GAN, the technologies based on generative adversarial network models have made more progress and advantages in the field of face synthesis. The model in this paper, based on the generation of the adversarial network model, combines the advantages of the conditional autoencoder and the StyleGAN model, and innovates in the use of the feature contrasting device, which can generate HD face images consistent with the change logic across ages, and effectively avoid the emergence of problems such as organ deformation and identity inconsistency.
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