Male and female facial attractiveness prediction: An image-based approach using convolutional neural network-based models

Takanori Sano
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Abstract

In recent years, significant research has been conducted on the use of deep learning for prediction of facial attractiveness. These studies are expected to have various applications such as recommendation systems and face beautification. Therefore, it is crucial to improve the prediction accuracy. In this study, to improve the accuracy of facial attractiveness prediction, several convolutional neural network-based models were built using sex-specific datasets. Then, their accuracies were compared. The results showed that VGG19 and VGG16 had the highest accuracies for the male and female face datasets, respectively. A detailed confirmation of the factors necessary for prediction is expected to contribute to the construction of models based on human perceptual characteristics. These models maybe utilized in various engineering applications.
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男性和女性面部吸引力预测:使用基于卷积神经网络的模型的基于图像的方法
近年来,在使用深度学习预测面部吸引力方面进行了大量研究。这些研究有望有各种各样的应用,如推荐系统和面部美化。因此,提高预测精度至关重要。在本研究中,为了提高面部吸引力预测的准确性,使用基于性别的数据集建立了几个基于卷积神经网络的模型。然后,比较它们的精度。结果表明,VGG19和VGG16分别对男性和女性人脸数据集具有最高的准确率。对预测所需因素的详细确认有望有助于基于人类感知特征的模型的构建。这些模型可用于各种工程应用。
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