利用美貌原型和决策提高面部吸引力

Mingming Sun, D. Zhang, Jing-yu Yang
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引用次数: 8

摘要

为了提高一张脸的吸引力,直觉上,一个人可以驱使脸接近一些美丽的脸。实现直观的解决方案需要解决两个主要问题。一个问题是如何定义和发现合适的美原型。另一个问题是如何确定原始面孔和美的原型之间的平衡,以产生理想的面孔。在本文中,我们提出了一种定量的方法来解决这两个问题。首先,将一组美丽面孔原型识别为美丽面孔的聚类中心,避免涉及特定的个人面部特征;其次,学习一个美丽决策函数作为一个分类器,可以判断一张脸是否漂亮。然后,面部吸引力改进程序为原始面孔找到最接近的美丽原型,然后从原始面孔接近原型,直到美丽决策函数告诉接近的面孔是美丽的。该方法对人脸进行美化,使美化后的人脸与原始人脸之间的差异最小化。实验结果验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face attractiveness improvement using beauty prototypes and decision
To improve the attractiveness of a face, intuitively, one can drive the face approaching some beautiful faces. There are two major problem to solve for implementing the intuitive solution. One problem is that how to define and discover suitable beauty prototypes. Another is that how to determine the balance between the original face and the beauty prototype to produce the desired face. In this paper, we proposed a quantitive method to solve these two problems. First, a set of beautiful face prototypes are identified as cluster centers of beautiful faces, which avoid involving specific personal facial characteristic. Second, a beauty decision function is learned as a classifier that can tell whether a face is beautiful or not. Then, the facial attractiveness improvement procedure finds the nearest beauty prototype for the original face, and then approaches the prototype from the original face until the beauty decision function tells the approaching face is beautiful. With this method, the face is beautified and the difference between the beautified face and the original face is minimized. The experimental results verify the validity of the proposed methods.
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