Age Progression/Regression by Conditional Adversarial Autoencoder
Zhifei Zhang, Yang Song, Hairong Qi

TL;DR
This paper introduces a conditional adversarial autoencoder that can perform face age progression and regression without requiring paired training samples, enabling realistic age transformation from unlabeled face images.
Contribution
It presents a novel generative model that learns a face manifold conditioned on age, allowing smooth age progression and regression without paired data.
Findings
Produces realistic age-progressed and regressed faces
Outperforms state-of-the-art methods in quality and flexibility
Handles unlabeled images effectively
Abstract
"If I provide you a face image of mine (without telling you the actual age when I took the picture) and a large amount of face images that I crawled (containing labeled faces of different ages but not necessarily paired), can you show me what I would look like when I am 80 or what I was like when I was 5?" The answer is probably a "No." Most existing face aging works attempt to learn the transformation between age groups and thus would require the paired samples as well as the labeled query image. In this paper, we look at the problem from a generative modeling perspective such that no paired samples is required. In addition, given an unlabeled image, the generative model can directly produce the image with desired age attribute. We propose a conditional adversarial autoencoder (CAAE) that learns a face manifold, traversing on which smooth age progression and regression can be realized…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis · 3D Shape Modeling and Analysis
MethodsSolana Customer Service Number +1-833-534-1729
