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Makeup Transfer Using Support Vector Regression

机译:使用支持向量回归进行化妆品转移

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摘要

This study aimed to generate a virtual makeup facial image considering personal facial features (texture information) using machine learning. In conventional makeup simulator systems, the makeup image (target image) is simply transferred to the user's facial image, and they do not consider the user's individual facial features. Therefore, in this study, we used image pairs of unpainted faces and their makeup faces developed by beauticians as training data to learn a mapping function between the natural image and the makeup image using support vector regression (the mapping function represents the experience of beauticians). Subsequently, using the estimated mapping function, we automatically generated a virtual makeup image based on the individual features of an unpainted (natural) facial image (the user's input image). Additionally, we extend our method to transfer the makeup texture to a three dimensional reconstructed facial image so that the user can objectively evaluate the differences in the impression of makeup from different viewpoints.
机译:这项研究旨在使用机器学习生成考虑个人面部特征(纹理信息)的虚拟化妆面部图像。在常规的化妆模拟器系统中,化妆图像(目标图像)仅被转移到用户的面部图像,并且它们不考虑用户的个人面部特征。因此,在本研究中,我们使用美容师开发的未上漆脸部图像对及其化妆脸部作为训练数据,以使用支持向量回归来学习自然图像和化妆图像之间的映射函数(该映射函数代表美容师的经验) 。随后,使用估计的映射功能,我们根据未上漆的(自然)面部图像(用户输入的图像)的各个特征自动生成虚拟化妆图像。此外,我们扩展了将化妆纹理转移到三维重构面部图像的方法,以便用户可以从不同的角度客观地评估化妆印象的差异。

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