TL;DR
This paper introduces PFA-GAN, a progressive face aging framework using multiple sub-networks to improve image quality, aging accuracy, and identity preservation in face aging, outperforming existing cGAN-based methods.
Contribution
The paper proposes a novel progressive face aging approach with multiple sub-networks and an age estimation loss, enhancing aging realism and accuracy over prior single-network cGAN methods.
Findings
Outperforms existing cGAN-based face aging methods.
Achieves better aging accuracy and image quality.
Demonstrates smooth aging transitions on benchmark datasets.
Abstract
Face aging is to render a given face to predict its future appearance, which plays an important role in the information forensics and security field as the appearance of the face typically varies with age. Although impressive results have been achieved with conditional generative adversarial networks (cGANs), the existing cGANs-based methods typically use a single network to learn various aging effects between any two different age groups. However, they cannot simultaneously meet three essential requirements of face aging -- including image quality, aging accuracy, and identity preservation -- and usually generate aged faces with strong ghost artifacts when the age gap becomes large. Inspired by the fact that faces gradually age over time, this paper proposes a novel progressive face aging framework based on generative adversarial network (PFA-GAN) to mitigate these issues. Unlike the…
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