High Resolution Face Age Editing
Published in ICPR, 2020
Recommended citation: Xu Yao, Gilles Puy, Alasdair Newson, Yann Gousseau, Pierre Hellier
ICPR 2020
Abstract
Face age editing has become a crucial task in film postproduction, and is also becoming popular for general purpose photography. Recently, adversarial training has produced some of the most visually impressive results for image manipulation, including the face aging/de-aging task. In spite of considerable progress, current methods often present visual artifacts and can only deal with low-resolution images. In order to achieve aging/de-aging with the high quality and robustness necessary for wider use, these problems need to be addressed. This is the goal of the present work. We present an encoder-decoder architecture for face age editing. The core idea of our network is to create both a latent space containing the face identity, and a feature modulation layer corresponding to the age of the individual. We then combine these two elements to produce an output image of the person with a desired target age. Our architecture is greatly simplified with respect to other approaches, and allows for continuous age editing on high resolution images in a single unified model. Source codes are available at https://github.com/InterDigitalInc/HRFAE.