SelfAge: Personalized Facial Age Transformation Using Self-reference Images
Journal:
arXiv
Published Date:
Feb 19, 2025
Abstract
Age transformation of facial images is a technique that edits age-related
person's appearances while preserving the identity. Existing deep
learning-based methods can reproduce natural age transformations; however, they
only reproduce averaged transitions and fail to account for individual-specific
appearances influenced by their life histories. In this paper, we propose the
first diffusion model-based method for personalized age transformation. Our
diffusion model takes a facial image and a target age as input and generates an
age-edited face image as output. To reflect individual-specific features, we
incorporate additional supervision using self-reference images, which are
facial images of the same person at different ages. Specifically, we fine-tune
a pretrained diffusion model for personalized adaptation using approximately 3
to 5 self-reference images. Additionally, we design an effective prompt to
enhance the performance of age editing and identity preservation. Experiments
demonstrate that our method achieves superior performance both quantitatively
and qualitatively compared to existing methods. The code and the pretrained
model are available at https://github.com/shiiiijp/SelfAge.