Disentangled representation learning and residual GAN for age-invariant face verification

作者:

Highlights:

• We propose a novel model called DR-RGAN to specifically address the AIFV task. DR-RGAN enjoys the strengths of both GAN model, which enhances the synthesis quality, and deep residual learning, which enables more expressive face representation learning.

• Through a residual encoder-decoder structured generator, the age-invariant identity representation learning is explicitly disentangled from the age variation, so as to avoid the influence of age changes on face verification.

• A multi-task discriminator is proposed to not only distinguish between real vs fake faces, but also estimate the identity and age attributes of the face. With such a design, DR-RGAN gains better face aging accuracy and stronger face representation learning ability.

• Extensive quantitative and qualitative experiments on two famous large-scale datasets, CACD and LFW, clearly show that our DR-RGAN model generates pleasing aging images and achieves a high accuracy of face verification.

摘要

•We propose a novel model called DR-RGAN to specifically address the AIFV task. DR-RGAN enjoys the strengths of both GAN model, which enhances the synthesis quality, and deep residual learning, which enables more expressive face representation learning.•Through a residual encoder-decoder structured generator, the age-invariant identity representation learning is explicitly disentangled from the age variation, so as to avoid the influence of age changes on face verification.•A multi-task discriminator is proposed to not only distinguish between real vs fake faces, but also estimate the identity and age attributes of the face. With such a design, DR-RGAN gains better face aging accuracy and stronger face representation learning ability.•Extensive quantitative and qualitative experiments on two famous large-scale datasets, CACD and LFW, clearly show that our DR-RGAN model generates pleasing aging images and achieves a high accuracy of face verification.

论文关键词:Face recognition,Age-invariant face verification,Representation learning,Generative adversarial network

论文评审过程:Received 30 May 2019, Revised 6 October 2019, Accepted 24 October 2019, Available online 25 October 2019, Version of Record 13 May 2020.

论文官网地址:https://doi.org/10.1016/j.patcog.2019.107097