Anti-Makeup: Learning A Bi-Level Adversarial Network for Makeup-Invariant Face Verification
Li, Yi1,2,3,4; Song, Lingxiao1,3,4; Wu, Xiang1,3,4; He, Ran1,2,3,4; Tan, Tieniu1,2,3,4
2018-02
会议日期February 2–7, 2018
会议地点New Orleans, Louisiana, USA
英文摘要

Makeup is widely used to improve facial attractiveness and is well accepted by the public. However, different makeup styles will result in significant facial appearance changes. It remains a challenging problem to match makeup and non-makeup face images. This paper proposes a learning from generation approach for makeup-invariant face verification by introducing a bi-level adversarial network (BLAN). To alleviate the negative effects from makeup, we first generate non-makeup images from makeup ones, and then use the synthesized nonmakeup images for further verification. Two adversarial networks in BLAN are integrated in an end-to-end deep network, with the one on pixel level for reconstructing appealing facial images and the other on feature level for preserving identity information. These two networks jointly reduce the sensing gap between makeup and non-makeup images. Moreover, we make the generator well constrained by incorporating multiple perceptual losses. Experimental results on three benchmark makeup face datasets demonstrate that our method achieves state-of-the-art verification accuracy across makeup status and can produce photo-realistic non-makeup face images.

内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/39175]  
专题自动化研究所_智能感知与计算研究中心
作者单位1.Center for Research on Intelligent Perception and Computing, CASIA
2.University of Chinese Academy of Sciences
3.Center for Excellence in Brain Science and Intelligence Technology, CAS
4.National Laboratory of Pattern Recognition, CASIA
推荐引用方式
GB/T 7714
Li, Yi,Song, Lingxiao,Wu, Xiang,et al. Anti-Makeup: Learning A Bi-Level Adversarial Network for Makeup-Invariant Face Verification[C]. 见:. New Orleans, Louisiana, USA. February 2–7, 2018.
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