基于树和回归方法的鼻整形术后面部吸引力评价

Lubomír Štěpánek, P. Kasal, J. Mĕst'ák
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引用次数: 8

摘要

人脸的几何特征和面部吸引力水平之间的联系对于包括鼻整形在内的面部美容手术的规划是重要的,但它足够复杂,目前仍不清楚。进一步说,面部吸引力也依赖于当前表达的面部情绪,因此面部整形手术领域需要一种可靠的方法来将每个患者的面部图像分类为一种面部情绪。为了解决这两个问题,我们进行了基于回归树的分析,以了解人脸几何特征的哪些变化增加了隆鼻后的吸引力水平。采用多元线性回归量化特征变化的效应量。Naïve分别学习了贝叶斯分类、分类树、随机森林、支持向量机和神经网络,将面部图像分类为面部情绪。鼻额角和鼻唇角的扩大在统计学上增加了隆鼻术后的面部吸引力,这是基于树和回归方法的结果。神经网络的分类准确率超过了其他机器学习方法的准确率。应用机器学习方法发现了一些显著的面部几何特征,增加了隆鼻术后面部的吸引力,以及将面部图像分类为面部情绪的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Facial Attractiveness after Undergoing Rhinoplasty Using Tree-based and Regression Methods
Associations between geometric features of a human face and facial attractiveness level is important for planning of facial aesthetic surgeries including rhinoplasty, but is complex enough and remains still unclear. Going further, facial attractiveness is also dependent on currently expressed facial emotions, therefore an area of facial plastic surgery needs a reliable way how to classify each patient’s facial image into one of the facial emotions.To address both of the challenges, we performed regression trees- based analysis in order to realize which changes of geometric features of a human face increase its attractiveness level after undergoing rhinoplasty. Multivariate linear regression was applied to quantify effect sizes of the features’ changes.Naïve Bayes classifies, classification trees, random forests, support vector machines and neural networks, respectively, were learned to classify facial images into facial emotions.Enlargement of both nasofrontal and nasolabial angles increase statistically facial attractiveness after undergoing the rhinoplasty, as both tree-based and regression methods showed. Classification accuracy of the neural networks exceeded accuracies of other machine-learning methods.The applied machine-learning methods uncovered some significant facial geometric features increasing facial attractiveness after the rhinoplasty undergoing as well as possibility to classify facial images into facial emotions.
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