FaceID-GAN:学习一种对称的三人GAN,用于保持身份的人脸合成

Yujun Shen, Ping Luo, Junjie Yan, Xiaogang Wang, Xiaoou Tang
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引用次数: 150

摘要

基于生成对抗网络(GANs)的人脸合成技术已经取得了长足的发展。现有方法通常将GAN描述为一个双人游戏,其中判别器将人脸图像从真实域和合成域区分开来,而生成器通过合成具有逼真质量的人脸来降低其判别性。当鉴别器无法区分这两个域时,它们的竞争趋于收敛。与双玩家gan不同,这项工作通过提出FaceID-GAN来生成身份保持的人脸,FaceID-GAN将人脸身份分类器作为第三个玩家,通过区分真实人脸和合成人脸的身份与生成器竞争(见图1)。当生成的人脸在保持身份的同时又具有高质量时,达到一个静止点。FaceID-GAN不是简单地将身份分类器建模为附加的鉴别器,而是通过满足信息对称来制定,从而确保真实图像和合成图像投影到相同的特征空间中。换句话说,使用身份分类器从生成器的输入(真实)和输出(合成)人脸图像中提取身份特征,大大减轻了GAN的训练难度。大量实验表明,FaceID-GAN能够在保持身份的同时生成任意视点的人脸,优于最近的先进方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FaceID-GAN: Learning a Symmetry Three-Player GAN for Identity-Preserving Face Synthesis
Face synthesis has achieved advanced development by using generative adversarial networks (GANs). Existing methods typically formulate GAN as a two-player game, where a discriminator distinguishes face images from the real and synthesized domains, while a generator reduces its discriminativeness by synthesizing a face of photorealistic quality. Their competition converges when the discriminator is unable to differentiate these two domains. Unlike two-player GANs, this work generates identity-preserving faces by proposing FaceID-GAN, which treats a classifier of face identity as the third player, competing with the generator by distinguishing the identities of the real and synthesized faces (see Fig.1). A stationary point is reached when the generator produces faces that have high quality as well as preserve identity. Instead of simply modeling the identity classifier as an additional discriminator, FaceID-GAN is formulated by satisfying information symmetry, which ensures that the real and synthesized images are projected into the same feature space. In other words, the identity classifier is used to extract identity features from both input (real) and output (synthesized) face images of the generator, substantially alleviating training difficulty of GAN. Extensive experiments show that FaceID-GAN is able to generate faces of arbitrary viewpoint while preserve identity, outperforming recent advanced approaches.
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