年龄、性别和种族面孔生成的细粒度多属性对抗学习

Lipeng Wan, Jun Wan, Yi Jin, Zichang Tan, S. Li
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引用次数: 12

摘要

自生成对抗网络(GAN)提出以来,近两年来人们对用于人脸识别的人脸图像生成进行了研究。然而,基于gan的细粒度人脸属性分析方法,如精确年龄的人脸生成,目前应用较少。本文提出了细粒度多属性GAN (FM-GAN)算法,该算法能够生成特定多属性下的细粒度人脸图像,如30岁的白人男性。结果表明,细粒度多标签条件下的FM-GAN在图像视觉保真度方面优于条件GAN (cGAN)。此外,利用FM-GAN生成的合成图像进行人脸属性分析的数据增强。实验还表明,合成图像可以辅助CNN训练,缓解数据不足的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Grained Multi-Attribute Adversarial Learning for Face Generation of Age, Gender and Ethnicity
Since the Generative Adversarial Network (GAN) was proposed, facial image generation used for face recognition has been studied in recent two years. However, there are few GAN-based methods applied for fine-grained facial attribute analysis, such as face generation with precise age. In this paper, fine-grained multi-attribute GAN (FM-GAN) is presented, which can generate fine-grained face image under specific multiply attributes, such as 30-year-old white man. It shows that the proposed FM-GAN with fine-grained multi-label conditions is better than conditional GAN (cGAN) in terms of image visual fidelity. Besides, synthetic images generated by FM-GAN are used for data augmentation for face attribute analysis. Experiments also demonstrate that synthetic images can assist the CNN training and relieve the problem of insufficient data.
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