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Evaluation of facial attractiveness for purposes of plastic surgery using machine-learning methods and image analysis

机译:用机器学习方法和图像分析评估整形手术目的的面部吸引力

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Many current studies conclude that facial attractiveness perception is data-based and irrespective of the perceiver. However, analyses of facial geometric image data and its visual impact always exceeded power of classical statistical methods. In this study, we have applied machine-learning methods to identify geometric features of a face associated with an increase of facial attractiveness after undergoing rhinoplasty. Furthermore, we explored how accurate classification of faces into sets of facial emotions and their facial manifestations is, since categorization of human faces into emotions manifestation should take into consideration the fact that total face impression is also dependent on expressed facial emotion. Both profile and portrait facial image data were collected for each patient (n = 42), processed, landmarked and analysed using R language. Multivariate linear regression was performed to select predictors increasing facial attractiveness after undergoing rhinoplasty. The sets of used facial emotions originate from Ekman-Friesen FACS scale, but was improved substantially. Bayesian naive classifiers, decision trees (CART) and neural networks were learned to allow assigning a new face image data into one of facial emotions. Enlargements of both a nasolabial and nasofrontal angle within rhinoplasty were determined as significant predictors increasing facial attractiveness (p < 0.05). Neural networks manifested the highest predictive accuracy of a new face classification into facial emotions. Geometrical shape of a mouth, then eyebrows and finally eyes affect in descending order final classified emotion, as was identified using decision trees. We performed machine-learning analyses to point out which facial geometric features, based on large data evidence, affect facial attractiveness the most, and therefore should preferentially be treated within plastic surgeries.
机译:许多目前的研究得出结论,面部吸引力感知是基于数据的,无论感知者如何。然而,面部几何图像数据分析及其视觉冲击始终超过了经典统计方法的功率。在这项研究中,我们已经应用了机器学习方法,以识别在经过鼻落成形术后对面部吸引力增加相关的面孔的几何特征。此外,我们探讨了面孔的准确分类,进入面部情绪和面部表现形式,因为人类面的分类表现出来,应考虑到完全面临的面部印象也依赖于表达的面部情绪。每个患者(n = 42)收集两个配置文件和肖像面部图像数据,使用R语言处理,地标和分析。进行多变量线性回归以在接受鼻落成形术后,选择预测变量增加面部吸引力。使用的面部情绪的组源自ekman-friesen facs规模,但大幅改善。学会了贝叶斯天真分类器,决策树(推车)和神经网络,以允许将新的面部图像数据分配给面部情绪中的一个。鼻落成形术中鼻腔和鼻鼻甲角度的放大被确定为显着的预测因子,增加面部吸引力(P <0.05)。神经网络表现为新脸部分类的最高预测准确性,进入面部情绪。嘴巴的几何形状,然后眉毛,最后眼睛影响降序最终分类的情绪,正如使用决策树所识别的那样。我们执行了机器学习分析,以指出基于大数据证据的面部几何特征,影响面部吸引力最多,因此应优先在整形手柑中进行处理。

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