Singh Prateush, Oregi Paul, Dhar Shivani, Krumhuber Eva, Mosahebi Ash, Ponniah Allan
Aesthet Surg J Open Forum. 2023 Aug 1;5:ojad072. doi: 10.1093/asjof/ojad072. eCollection 2023.
Understanding the differences in facial shapes in individuals from different races is relevant across several fields, from cosmetic and reconstructive medicine to anthropometric studies.
To determine whether there are features shared by the faces of an aesthetic female face database and if they correlate to their racial demographics using novel computer modeling.
The database was formed using the "top 100 most beautiful women" lists released by "For Him Magazine" for the last 15 years. Principal component analysis (PCA) of 158 parameters was carried out to check for clustering or racial correlation with these clusters. PCA is a machine-learning tool used to reduce the number of variables in a large data set, allowing for easier analysis of the data while retaining as much information as possible from the original data set. A review of the literature on craniofacial anthropometric differences across ethnicities was also undertaken to complement the computer data.
Two thousand eight hundred and seventy aesthetic faces formed the database in the same racial proportion as 10,000 faces from the general population as a baseline. PCA clustering illustrated grouping by latent space parameters for facial dimensions but showed no correlation with racial demographics. There was a commonality of facial features within the aesthetic cohort, which differed from the general population. Fourteen papers were included in the review which contained 8142 individuals.
Aesthetic female faces have commonalities in facial features regardless of racial demographic, and the dimensions of these features vary from the baseline population. There may even be a common human aesthetic proportion that transcends racial boundaries, but this is yet to be elucidated.
了解不同种族个体面部形状的差异在多个领域都具有重要意义,从美容和重建医学到人体测量学研究。
使用新颖的计算机建模来确定一个美学女性面部数据库中的面部是否存在共同特征,以及这些特征是否与其种族人口统计学相关。
该数据库是使用《男性杂志》在过去15年发布的“百位最美丽女性”榜单建立的。对158个参数进行主成分分析(PCA),以检查聚类情况或与这些聚类的种族相关性。PCA是一种机器学习工具,用于减少大数据集中的变量数量,以便在尽可能保留原始数据集信息的同时更轻松地分析数据。还对不同种族颅面人体测量差异的文献进行了综述,以补充计算机数据。
2870张美学面部以与10000张来自普通人群的面部相同的种族比例作为基线构成了数据库。PCA聚类显示按面部尺寸的潜在空间参数进行分组,但与种族人口统计学无关。美学队列中的面部特征存在共性,这与普通人群不同。综述纳入了14篇论文,包含8142名个体。
无论种族人口统计学如何,美学女性面部在面部特征上都有共性,并且这些特征的尺寸与基线人群不同。甚至可能存在超越种族界限的共同人类美学比例,但这还有待阐明。