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An analysis of automatic gender detection by first-order configural relations

机译:基于一阶配置关系的自动性别检测分析

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Automatic gender detection from face images is a challenging problem. In the literature, different techniques have been applied so far on face images for gender detection. In contrast to these existing methods, we have analyzed the usage of first-order configural relations of the face to predict gender from images by using machine learning algorithms. In experiments on the dataset of Wikipedia profile pictures, 83% of general accuracy, 83.3% detection rate for male faces and 82.7% detection rate for female faces have been achieved by Logistic Regression. These results indicate that first-order configural relations are effective in automatic gender prediction from digital face images.
机译:从面部图像自动检测性别是一个具有挑战性的问题。在文献中,迄今为止,已经在面部图像上应用了不同的技术来进行性别检测。与这些现有方法相比,我们已经分析了使用人脸一阶配置关系通过使用机器学习算法从图像预测性别的用法。通过Logistic回归,在Wikipedia头像图片数据集上进行的实验中,总体准确率达到83%,男性面部检测率为83.3%,女性面部检测率为82.7%。这些结果表明,一阶配置关系在根据数字面部图像进行自动性别预测中有效。

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