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Golden Ratio: The Attributes of Facial Attractiveness Learned By CNN

机译:黄金分割率:CNN所学习的面部吸引力属性

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The recent success of deep learning has promoted the applications in facial attractiveness prediction and enhancement. However, what attributes have been learned to represent facial attractiveness is not well discovered yet. In this work, we find that DNN can learn both local and global shape-cues of face (Golden Ratio) that associate with facial attractiveness. This finding is concluded from a newly trained CNN model and an interpretation of visualizing activation of the category-specific neurons. The CNN model is trained on thousands extremely attractive/unattractive face images, and achieves an accuracy of 98.05%. The deconvolutional neural network generates face-like representations that depict the intuitive attributes of four face attractive categories. The results are consistent with the beauty ratios of facial attractiveness in psychological research.
机译:深度学习的最新成功促进了在面部吸引力预测和增强中的应用。然而,尚未很好地发现什么属性可以代表面部吸引力。在这项工作中,我们发现DNN可以学习与面部吸引力相关的局部和全局面部形状提示(黄金比例)。这一发现是根据新近训练的CNN模型和可视化类别特定神经元激活的结论得出的。 CNN模型在数千个极具吸引力/吸引力的人脸图像上进行训练,并达到98.05%的准确性。反卷积神经网络生成类似于面部的表示,描述了四个吸引人的类别的直观属性。结果与心理学研究中面部吸引力的美率相吻合。

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