Example-Guided Identify Preserving Face Synthesis by Metric Learning

Daiyue Wei, Xiaoman Hu, Keke Chen, P. Chan
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引用次数: 0

Abstract

Generative adversarial networks (GANs) are commonly applied to example-guided identify preserving face synthesis. A binary classifier is used as style consistency discriminator in GAN model in order to ensure the consistency of style. However, the over-fitting problem of a binary classifier downgrade its discrimination ability on style consistency. In this paper, we propose a style consistency discriminator based on metric learning, which performs better in keeping identity information and guaranteeing consistency in style between input examplar and result. Through separating the positive pairs form the negative, metric learning model can efficiently measure the similarity between the synthesis face and the genuine face. The experimental results indicate that the metric learning performs better than a binary classifier in terms of preserving style consistency.
基于度量学习的实例识别保留人脸合成
生成对抗网络(GANs)通常应用于实例指导下的人脸识别保持合成。在GAN模型中使用二值分类器作为风格一致性判别器,以保证风格的一致性。然而,二值分类器的过拟合问题降低了二值分类器对风格一致性的识别能力。本文提出了一种基于度量学习的风格一致性鉴别器,它在保持身份信息和保证输入示例与结果风格一致性方面表现较好。度量学习模型通过将正对与负对分离,可以有效地度量合成人脸与真实人脸的相似度。实验结果表明,度量学习在保持风格一致性方面优于二元分类器。
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