Symmetry (Nov 2017)

A Novel Framework for Assessing Facial Attractiveness Based on Facial Proportions

  • Yu-Jin Hong,
  • Gi Pyo Nam,
  • Heeseung Choi,
  • Junghyun Cho,
  • Ig-Jae Kim

DOI
https://doi.org/10.3390/sym9120294
Journal volume & issue
Vol. 9, no. 12
p. 294

Abstract

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In this paper, we present a novel framework for automatically assessing facial attractiveness that considers four ratio feature sets as objective elements of facial attractiveness. In our framework, these feature sets are combined with three regression-based predictors to estimate a facial beauty score. To enhance the system’s performance to make it comparable with human scoring, we apply a score fusion technique. Experimental results show that the attractiveness score obtained by the proposed framework better correlates with human assessments than the scores from other predictors. The framework’s modularity allows any features or predictors to be integrated into the facial attractiveness measure. Our proposed framework can be applied to many beauty-related fields, such as the plastic surgery, cosmetics, and entertainment industries.

Keywords