首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Is principal component analysis an effective tool to predict face attractiveness? A contribution based on real 3D faces of highly selected attractive women, scanned with stereophotogrammetry
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Is principal component analysis an effective tool to predict face attractiveness? A contribution based on real 3D faces of highly selected attractive women, scanned with stereophotogrammetry

机译:主成分分析是预测人脸吸引力的有效工具吗?基于高度选拔的有吸引力女性的真实3D面孔的贡献,并通过立体摄影测量法进行扫描

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摘要

In the literature, several papers report studies on mathematical models used to describe facial features and to predict female facial beauty based on 3D human face data. Many authors have proposed the principal component analysis (PCA) method that permits modeling of the entire human face using a limited number of parameters. In some cases, these models have been correlated with beauty classifications, obtaining good attractiveness predictability using wrapped 2D or 3D models. To verify these results, in this paper, the authors conducted a three-dimensional digitization study of 66 very attractive female subjects using a computerized noninvasive tool known as 3D digital photogrammetry. The sample consisted of the 64 contestants of the final phase of the Miss Italy 2010 beauty contest, plus the two highest ranked contestants in the 2009 competition. PCA was conducted on this real faces sample to verify if there is a correlation between ranking and the principal components of the face models. There was no correlation and therefore, this hypothesis is not confirmed for our sample. Considering that the results of the contest are not only solely a function of facial attractiveness, but undoubtedly are significantly impacted by it, the authors based on their experience and real faces conclude that PCA analysis is not a valid prediction tool for attractiveness. The database of the features belonging to the sample analyzed are downloadable online and further contributions are welcome.
机译:在文献中,有几篇论文报道了有关基于3D人脸数据来描述面部特征和预测女性面部美容的数学模型的研究。许多作者提出了主成分分析(PCA)方法,该方法允许使用数量有限的参数对整个人脸进行建模。在某些情况下,这些模型已与美容分类相关联,使用包裹的2D或3D模型可获得良好的吸引力预测性。为了验证这些结果,在本文中,作者使用称为3D数字摄影测量法的计算机化非侵入性工具,对66位极具吸引力的女性受试者进行了三维数字化研究。样本包括2010年意大利小姐选美大赛决赛阶段的64位选手,以及2009年比赛中排名最高的两位选手。在此真实面孔样本上进行了PCA,以验证排名与面孔模型的主要组成部分之间是否存在相关性。没有相关性,因此,对于我们的样本,该假设尚未得到证实。考虑到比赛的结果不仅是面部吸引力的函数,而且无疑会受到面部吸引力的极大影响,因此,基于他们的经验和真实面孔,作者认为PCA分析不是有效的吸引力预测工具。属于分析样本的特征的数据库可在线下载,欢迎进一步贡献。

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