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We address the problem of single photo age progression and regression-the prediction of how a person might look in the future, or how they looked in the past. Most existing aging methods are limited to changing the texture, overlooking transformations in head shape that occur during the human aging and growth process. This limits the applicability of previous methods to aging of adults to slightly older adults, and application of those methods to photos of children does not produce quality results. We propose a novel multi-domain image-to-image generative adversarial network architecture, whose learned latent space models a continuous bi-directional aging process. The network is trained on the FFHQ dataset, which we labeled for ages, gender, and semantic segmentation. Fixed age classes are used as anchors to approximate continuous age transformation. Our framework can predict a full head portrait for ages 0-70 from a single photo, modifying both texture and shape of the head. We demonstrate results on a wide variety of photos and datasets, and show significant improvement over the state of the art.
A lifespan face synthesis (LFS) model aims to generate a set of photo-realistic face images of a persons 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 b
To minimize the effects of age variation in face recognition, previous work either extracts identity-related discriminative features by minimizing the correlation between identity- and age-related features, called age-invariant face recognition (AIFR
Age estimation is a technique for predicting human ages from digital facial images, which analyzes a persons face image and estimates his/her age based on the year measure. Nowadays, intelligent age estimation and age synthesis have become particular
We present a transformation-grounded image generation network for novel 3D view synthesis from a single image. Instead of taking a blank slate approach, we first explicitly infer the parts of the geometry visible both in the input and novel views and
Despite the remarkable progress in face recognition related technologies, reliably recognizing faces across ages still remains a big challenge. The appearance of a human face changes substantially over time, resulting in significant intra-class varia