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Exploring the Magnitude of Human Sexual Dimorphism in 3D Face Gender Classification

机译:在3D面孔性别分类中探索人类性异同的程度

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Human faces demonstrate clear Sexual Dimorphism (SD) for recognizing the gender. Different faces, even of the same gender, convey different magnitude of sexual dimorphism. However, in gender classification, gender has been interpreted discretely as either male or female. The exact magnitude of the sexual dimorphism in each gender is ignored. In this paper, we propose to evaluate the SD magnitude, using the ratio of votes from the Random Forest algorithm performed on 3D geometric features related to the face morphology. Then, faces are separated into a Low-SD group and a High-SD group. In the Intra-group experiments, when the training is performed with scans of similar SD magnitude than the testing scan, the classification accuracy improves. In Inter-group experiments, the scans with low magnitude of SD demonstrate higher gender discrimination power than the ones with high SD magnitude. With a decision-level fusion method, our method achieves 97.46% gender classification rate on the 466 earliest 3D scans of FRGCv2 (mainly neutral), and 97.18 % on the whole FRGCv2 dataset (with expressions).
机译:人脸显示出清晰的性二态性(SD),可识别性别。甚至相同性别​​的不同面孔也传达出不同程度的性二态性。但是,在性别分类中,性别被离散地解释为男性还是女性。每种性别的性二态性的确切大小都被忽略了。在本文中,我们建议使用随机森林算法对与人脸形态相关的3D几何特征进行投票的比率来评估SD大小。然后,将脸部分为低SD组和高SD组。在组内实验中,当使用与测试扫描相似的SD量级的扫描进行训练时,分类精度会提高。在小组间实验中,低SD量级的扫描显示出比具有高SD量级的扫描更高的性别歧视能力。通过决策级融合方法,我们的方法在466次FRGCv2早期3D扫描(主要是中性)中达到了97.46%的性别分类率,在整个FRGCv2数据集(带有表达式)中达到了97.18%的性别分类率。

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