Keon M Parsa, Amir A Hakimi, Tonja Hollis, Sarah C Shearer, Eugenia Chu, Michael J Reilly
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引用次数: 0
Abstract
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.
背景:机器学习年龄递进技术的进步为更好地了解公众对衰老面孔的看法提供了独特的机会。目的:比较观察者如何感知由机器学习模型创建的面孔的吸引力和传统性别特征。方法:开发了8个调查,每个调查有10组照片,这些照片使用机器学习模型逐步老化。受访者使用滑动刻度(范围:0-100)对每张照片的吸引力和男性气质或女性气质进行评分。研究人员计算并比较了男性和女性以及不同年龄层的平均吸引力得分。结果:共有315名受访者(男性51%,女性49%)完成了调查。面部年龄进展模型的准确率为85%。女性被认为吸引力明显下降(-10.43,p p = 0.39)。结论:在这项研究中,观察者发现男性和女性对老年人吸引力的感知是不同的。