Disentangled Lifespan Face Synthesis
Sen He, Wentong Liao, Michael Ying Yang, Yi-Zhe Song, Bodo Rosenhahn,, Tao Xiang

TL;DR
This paper introduces a novel lifespan face synthesis model that disentangles shape, texture, and identity features to generate realistic, age-sensitive face images across a person's lifespan, outperforming existing methods.
Contribution
The proposed model explicitly disentangles key face features and employs specialized transformation modules to effectively model nonlinear age-related changes.
Findings
Model outperforms state-of-the-art methods in quality and realism.
Effectively preserves identity across age transformations.
Successfully models nonlinear shape and texture changes with disentanglement.
Abstract
A lifespan face synthesis (LFS) model aims to generate a set of photo-realistic face images of a person's whole life, given only one snapshot as reference. The generated face image given a target age code is expected to be age-sensitive reflected by bio-plausible transformations of shape and texture, while being identity preserving. This is extremely challenging because the shape and texture characteristics of a face undergo separate and highly nonlinear transformations w.r.t. age. Most recent LFS models are based on generative adversarial networks (GANs) whereby age code conditional transformations are applied to a latent face representation. They benefit greatly from the recent advancements of GANs. However, without explicitly disentangling their latent representations into the texture, shape and identity factors, they are fundamentally limited in modeling the nonlinear age-related…
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Taxonomy
MethodsConvolution
