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Understanding the Impact of Aging on Attractiveness Using a Machine Learning Model of Facial Age Progression.

Keon M ParsaAmir Aaron HakimiTonja HollisSarah C ShearerEugenia ChuMichael J Reilly
Published in: Facial plastic surgery & aesthetic medicine (2023)
Background: Advances in machine learning age progression technology offer the unique opportunity to better understand the public's perception on the aging face. Objective: To compare how observers perceive attractiveness and traditional gender traits in faces created with a machine learning model. Methods: Eight surveys were developed, each with 10 sets of photographs that were progressively aged with a machine learning model. Respondents rated attractiveness and masculinity or femininity of each photograph using a sliding scale (range: 0-100). Mean attractiveness scores were calculated and compared between men and women as well as between age groups. Results: A total of 315 respondents (51% men, 49% women) completed the survey. Accuracy of the facial age progression model was 85%. Females were considered significantly less attractive (-10.43, p  < 0.01) and less feminine (-7.59, p  < 0.01) per decade with the greatest drop over age 40 years. Male attractiveness and masculinity were relatively preserved until age 50 years where attractiveness scores were significantly lower (-5.45, p  = 0.39). Conclusions: In this study, observers were found to perceive attractiveness at older ages differently between men and women.
Keyphrases
  • machine learning
  • artificial intelligence
  • mental health
  • emergency department
  • big data
  • skeletal muscle
  • metabolic syndrome
  • soft tissue
  • middle aged