ExFaceGAN: Exploring Identity Directions in GAN's Learned Latent Space for Synthetic Identity Generation
Fadi Boutros, Marcel Klemt, Meiling Fang, Arjan Kuijper, Naser Damer

TL;DR
ExFaceGAN introduces a novel method to disentangle identity information in pretrained GAN latent spaces, enabling the generation of multiple synthetic identity samples without additional supervision, and improves face recognition training.
Contribution
We propose ExFaceGAN, a framework that learns an identity boundary in pretrained GANs to generate diverse identity samples without supervision.
Findings
Successfully disentangles identity in GAN latent space
Generates multiple identity samples without additional supervision
Enhances face recognition model training with synthetic data
Abstract
Deep generative models have recently presented impressive results in generating realistic face images of random synthetic identities. To generate multiple samples of a certain synthetic identity, previous works proposed to disentangle the latent space of GANs by incorporating additional supervision or regularization, enabling the manipulation of certain attributes. Others proposed to disentangle specific factors in unconditional pretrained GANs latent spaces to control their output, which also requires supervision by attribute classifiers. Moreover, these attributes are entangled in GAN's latent space, making it difficult to manipulate them without affecting the identity information. We propose in this work a framework, ExFaceGAN, to disentangle identity information in pretrained GANs latent spaces, enabling the generation of multiple samples of any synthetic identity. Given a…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis
