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Automatic evaluation of facial attractiveness

机译:自动评估面部吸引力

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摘要

In this paper we present an approach of applying machine learning algorithms to the task of predicting human attractiveness. We have collected human beauty ratings of female facial images. We have chosen eigenfaces and ratio-based features as face representations. Along with k-nearest neighbors, we have used neural network and AdaBoost algorithms, which had not been used for this task before. Our analysis shows that machine learning algorithms have a preference towards facial symmetry, but also that a wider set of features needs to be included. We validate our results with a survey of four participants, which shows that facial attractiveness is a highly subjective judgement.
机译:在本文中,我们提出了一种将机器学习算法应用于预测人类吸引力的方法。我们已经收集了女性面部图像的人类美容等级。我们选择了特征脸和基于比率的特征作为脸部表示。与k近邻一起,我们使用了神经网络和AdaBoost算法,这些算法以前从未用于此任务。我们的分析表明,机器学习算法偏向于面部对称,但还需要包含更多的功能。我们通过对四名参与者的调查来验证我们的结果,这表明面部吸引力是一种高度主观的判断。

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