Mobile Device Facial Beauty Prediction using Convolutional Neural Network as Makeup Reference

Muhammad Luthfi, R. F. Rachmadi, I. Purnama, S. M. S. Nugroho
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Abstract

Beauty or good looks is one aspect of human attraction. Highly attractive people have an 8 to 12 % higher success in negotiations. One of the things that can be used to increase attractiveness is makeup or cosmetics. Makeup can be used alone or through the services of a Makeup Artist (MUA). MUA services are often used during important and once-in-a-lifetime events such as weddings. The difference in beauty before and after using this makeup cannot be measured but only seen and assessed manually. One application of machine learning in this field is Facial Beauty Predictions (FBP). FBP measures the value of a person's facial beauty or good looks. This paper investigated and implemented FBP on mobile devices, which makes it easier to assess anytime and anywhere. We investigated FBP models using five CNN architectures, including EfficientNetB0, VGG-16, ShuffleNet, MobileNet, and Inception. After evaluation, we choose MobileNetV2 CNN architecture as the primary model for mobile application FBP. Experiments on the FBP dataset show that MobileNetV2 achieves Pearson Correlation 0.7893 with only 10.5 MB for model file size. The model implemented for mobile devices works well in 13 different tests.
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基于卷积神经网络的移动设备面部美妆预测
美貌是人类吸引力的一个方面。长相出众的人在谈判中的成功率要高出8%到12%。可以用来增加吸引力的东西之一是化妆或化妆品。化妆可以单独使用或通过化妆师(MUA)的服务。MUA服务通常用于重要的和一生一次的活动,如婚礼。使用这款化妆品前后的美丽差异是无法测量的,只能手工观察和评估。机器学习在这一领域的一个应用是面部美丽预测(FBP)。FBP衡量的是一个人的颜值。本文在移动设备上研究并实现了FBP,使得随时随地的评估变得更加容易。我们使用五种CNN架构研究了FBP模型,包括EfficientNetB0、VGG-16、ShuffleNet、MobileNet和Inception。经过评估,我们选择MobileNetV2 CNN架构作为移动应用FBP的主要模型。在FBP数据集上的实验表明,MobileNetV2在模型文件大小仅为10.5 MB的情况下实现了0.7893的Pearson相关性。在移动设备上实现的模型在13个不同的测试中表现良好。
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