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Learning shape and texture progression for young child face aging
Affiliation:1. Room 704B, Administration Building B, Haiyun Park, Xiamen University, 361005, China;2. Room 606B, Administration Building C, Haiyun Park, Xiamen University, 361005, China;3. School of Electronic Engineering, Xidian University, Xi’an 710071, China
Abstract:Face aging (FA) for young faces refers to rendering the aging faces at target age for an individual, generally under 20s, which is an important topic of facial age analysis. Unlike traditional FA for adults, it is challenging to age children with one deep learning-based FA network, since there are deformations of facial shapes and variations of textural details. To alleviate the deficiency, a unified FA framework for young faces is proposed, which consists of two decoupled networks to apply aging image translation. It explicitly models transformations of geometry and appearance using two components: GD-GAN, which simulates the Geometric Deformation using Generative Adversarial Network; TV-GAN, which simulates the Textural Variations guided by the age-related saliency map. Extensive experiments demonstrate that our method has advantages over the state-of-the-art methods in terms of synthesizing visually plausible images for young faces, as well as preserving the personalized features.
Keywords:Face aging  Geometry deformation  Textural Variation  Generative Adversarial Network  Image translation
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