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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >The cluster assessment of facial attractiveness using fuzzy neural network classifier based on 3D Moiré features
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The cluster assessment of facial attractiveness using fuzzy neural network classifier based on 3D Moiré features

机译:基于3DMoiré特征的模糊神经网络分类器对人脸吸引力的聚类评估

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摘要

Facial attractiveness has long been argued upon varied emphases by philosophers, artists, psychologists and biologists. A number of studies empirically investigated how facial attractiveness was influenced by 2D facial characteristics, such as symmetry, averageness and golden ratio. However, few implementations of facial beauty assessment were based on 3D facial features. The purpose of this paper is to propose a novel cluster assessment system for facial attractiveness that is characterized by the incorporation of 3D geometric Moiré features with an adjusted fuzzy neural network (FNN). We first extract 3D facial features from images acquired by a 3dMD scanner. Seven Moiré features are employed to represent a 3D facial image. The FNN classifier, taking the Moiré features as the parameters, is then trained and validated against independently conducted attractiveness ratings. A number of diverse referees were invited and offered their attractiveness ratings over a five-item Likert scale for 100 female facial images. The proposed assessment presents a high accuracy rate of 90%, and the area under curve (AUC) computed from the receiver operating characteristic (ROC) curve is 0.95. The results show that the perceptions of facial attractiveness are essentially consensus among raters, and can be mathematically modeled through supervised learning techniques. The high accuracy achieved proves that the proposed FNN classifier can serve as a general, automated and human-like judgment tool for objective classification of female facial attractiveness, and thus has potential applications to the entertainment industry, cosmetic industry, virtual media, and plastic surgery.
机译:长期以来,哲学家,艺术家,心理学家和生物学家一直在对面部吸引力进行争论。大量研究从经验上调查了2D面部特征(例如对称性,平均性和黄金分割率)如何影响面部吸引力。但是,很少有基于3D面部特征的面部美容评估实现。本文的目的是提出一种针对面部吸引力的新型聚类评估系统,其特征在于将3D几何莫尔特征与调整后的模糊神经网络(FNN)结合在一起。我们首先从3dMD扫描仪获取的图像中提取3D面部特征。七个Moiré特征用于表示3D面部图像。然后,以莫尔特征为参数的FNN分类器根据独立进行的吸引力等级进行训练和验证。邀请了许多不同的裁判,并以五项李克特量表为100张女性面部图像提供了吸引力评级。所提出的评估提出了90%的高准确率,并且根据接收器工作特性(ROC)曲线计算出的曲线下面积(AUC)为0.95。结果表明,面部吸引力的感知本质上是评估者之间的共识,并且可以通过监督学习技术进行数学建模。所获得的高精确度证明了所提出的FNN分类器可以用作对女性面部吸引力进行客观分类的通用,自动化且类似于人的判断工具,因此在娱乐业,化妆品业,虚拟媒体和整形外科中具有潜在的应用。 。

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